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Systematic Review

Three-Dimensional Printed Liver Models for Surgical Planning and Intraoperative Guidance of Liver Cancer Resection: A Systematic Review

Discipline of Medical Radiation Science, Curtin Medical School, Curtin University, Perth 6845, Australia
*
Author to whom correspondence should be addressed.
Appl. Sci. 2023, 13(19), 10757; https://doi.org/10.3390/app131910757
Submission received: 31 July 2023 / Revised: 19 September 2023 / Accepted: 26 September 2023 / Published: 27 September 2023

Abstract

:
Successful liver cancer resection requires a comprehensive pre- and intraoperative understanding of the spatial relationships between a patient’s cancer and intrahepatic anatomy. The recent literature has highlighted that patient-specific 3D-printed liver models (3DPLMs) reconstructed from medical imaging data may enhance the comprehension of patients’ liver anatomy and thereby provide a useful preoperative planning and intraoperative guidance tool for liver cancer resection (LCR). The purpose of this systematic review was to critically examine the utility and feasibility of 3DPLMs for LCR surgical planning and intraoperative guidance and explore whether these applications improve patient outcomes. Articles were retrieved from four electronic databases (Scopus, Embase, PubMed, and Curtin University Database) according to predetermined eligibility criteria. In total, 22 eligible articles were identified, including 11 original research articles and 11 case reports. Key concepts were synthesised using an inductive content analysis approach suitable for this heterogeneous body of literature. There is significant descriptive and case-report evidence that 3DPLMs strengthen pre- and intraoperative comprehension of patient liver and liver tumour anatomy and can enhance pre- and intraoperative surgical decision making for LCR. The analysis of these studies presents large variances in the times and costs necessary to produce 3DPLMs, as studies did not provide the full expenses of materials, software, and equipment. Production times were focused on different aspects of the 3D printing process and were not comparable. The review nonetheless demonstrates the potential value of 3DPLMs as preoperative planning and intraoperative guidance tools for LCR. Future studies should detail these economic data points to ensure 3DPLMs’ viability. Further experimental research and randomised controlled trials are also necessary to examine the relationship between 3DPLMs and patient’s intra- and postoperative outcomes.

1. Introduction

Liver cancer is among the most commonly diagnosed malignancies globally and is the third leading cause of cancer deaths worldwide [1,2,3,4]. Its global incidence is predicted to accelerate, implicating significant mortality and burden of disease [1,2]. The most common radical treatment for liver cancer in patients with adequate healthy liver reserves is surgical resection [5,6,7,8,9,10]. Successful resection relies on highly specific preoperative planning due to the liver’s complex anatomy and significant anatomical variability between patients [10,11,12,13]. Hepatic vasculature, for example, may present multiple common variants. The right, middle and left hepatic veins each have three to four independent variants, while the portal veins, hepatic arteries and the biliary tree may also have structural variance [10]. This increases the complexity of the spatial relationships between intrahepatic structures and, therefore, requires adaptive and personalised surgical techniques [10]. During resection, a sufficient future liver remnant must be preserved, while tumours must be resected with an adequate margin to prevent reoccurrence [10,13,14]. This requires a comprehensive pre- and intraoperative understanding of the spatial relationships between a patient’s cancer and hepatic anatomy [10,15,16]. The increasing preference for laparoscopic resection procedures that restrict surgical field overview further emphasises the importance of this understanding [12,17].
Computed tomography (CT) and magnetic resonance imaging (MRI) are fundamental in preoperative planning of liver cancer resection (LCR) [10,11,12,13,18]. CT provides three-dimensional (3D) datasets with high spatial resolution; hence, it is traditionally most commonly used in studies for image processing and segmentation of hepatic structures. In recent years, MRI has also increasingly been performed in liver imaging due to its high contrast-to-noise ratio, and the opportunity of making a clinical diagnosis without using contrast medium. These modalities require the surgeon to mentally reconstruct a 3D visualisation of the liver and its structures from a series of two-dimensional (2D) images [13,15,19]. This can be particularly challenging due to liver’s complex anatomy and the sophisticated spatial relationships between its intrahepatic structures [10,13]. Three-dimensional volume renderings (3DVRs) assist in comprehending these relationships; however, they still require the surgeon to mentally reconstruct depth and spatial location information from a 2D image [16,18,19].
Advances in 3D printing (3DP) may alleviate these difficulties through the introduction of patient-specific 3D-printed liver models (3DPLMs) [20]. 3DP is a form of additive manufacturing where 3D objects are fabricated layer by layer from a digital file [21]. There are several 3DP technologies currently utilised in medicine, and at baseline, these involve a liquid, powder, or filament material being selectively deposited and then fused layer by layer via light, thermal energy, or a bonding agent to produce a solid material [21,22]. Segmentations of patients’ individual liver anatomy and pathology from their medical imaging data can be reconstructed in 3D file formats suitable for 3DP and then used to print representative 3DPLMs [12,17].
Previous literature reviews by Perica and Sun [20], Witowski et al. [23] and Bangeas et al. [24] highlight 3DPLMs’ surgical planning value; however, there is limited systematic research describing whether 3DPLMs enhance LCR surgical planning, or examining whether 3DPLMs improve LCR patients’ intra- and postoperative outcomes. This review, therefore, seeks to build on previous 3DPLM literature by providing an up-to-date critical examination of the utility of 3DPLMs for surgical planning and intraoperative guidance of LCR, exploring whether these applications improve patient outcomes. The rapidly advancing nature of 3DP technology [25,26] justifies an updated review, as does the rising incidence of liver cancer and increasing preference for laparoscopic approaches, which should increase demand for tools that enhance preoperative comprehension of patient liver anatomy.
The following research question will be explored: Do 3DPLMs enhance surgical planning and intraoperative guidance of LCR to improve patient outcomes? To address this question, this review will describe qualitatively the impact of 3DPLMs on pre- and intraoperative LCR surgical decision making, while considering how 3DPLM production methods affect their clinical feasibility, and explore how 3DPLMs affect patients’ LCR outcomes, using several measures, including future liver remnant volume; surgery duration; intraoperative blood loss; postoperative success (i.e., adequate resection margins and lack of reoccurrence) vs. morbidity (i.e., postoperative liver devascularisation or failure); and patients’ LCR literacy/knowledge and ability to provide informed consent.

2. Materials and Methods

2.1. Search Strategy

A thorough literature search was performed following the Preferred Reporting Items for Systematic Review and Meta-Analysis guidelines [27]. Three primary searches were conducted across the Scopus, Embase, and PubMed databases, and the Curtin Library Catalogue (Table 1). The Curtin Library Catalogue contains research articles from an extensive list of scholarly databases beyond Scopus, Embase, and PubMed, and was, therefore, utilised to broaden the search results and achieve a more comprehensive literature search.
Search Strategy 1 was designed to identify results discussing 3DPLMs in the context of liver cancer surgery/operations, while Search Strategy 2 used specific search terms to return literature discussing patient outcomes. Search Strategy 3 was a broader search to ensure comprehensive coverage of the literature. The search engine wildcard asterisk (*) symbol was used to further broaden the search results, with the final search for this review being performed in early June 2023.

2.2. Inclusion and Exclusion Criteria

Results were included if they were peer-reviewed, full-text articles published in English in the last five years examining the 3DPLM applications in LCR surgical planning and/or intraoperative guidance. The five-year publishing date threshold was selected to establish currency as 3DP technology has advanced rapidly over recent years. Articles discussing 3DP production methods/materials were included, as these factors directly impact 3DPLMs’ clinical validity and feasibility [28]. Articles describing 3D-printed liver phantoms for surgical simulation were also included, as 3D-printed phantoms in other specialties can provide tangible surgical benefits [28]. The limited original research present in the literature ultimately required the inclusion of case reports, which was a common practice in previous 3DPLM reviews [20,23,24]. To ensure a suitability-focused review, articles were excluded if they concentrated exclusively on liver transplantation or non-cancerous pathology; if they discussed clinical education exclusively without carry over to surgical planning/performance; or if they focused exclusively on 3D bioprinting. Articles were also excluded if they were cadaver studies or if they were not available in English.

2.3. Article Identification, Screening, and Quality Assessment

After performing all searches, duplicate results were removed. The remaining articles were screened by title and abstract to exclude irrelevant results. After full-text screening, 16 eligible articles were identified [9,11,13,15,16,17,19,22,29,30,31,32,33,34,35,36]. These articles’ references were examined to identify five secondary articles [12,14,37,38,39]. One further article was identified serendipitously during a manual search [40]. Altogether, 22 articles were identified for inclusion in the review (Figure 1). The quality of each study was assessed using the “Quality Assessment Tool for Studies with Diverse Designs” (QATSDD), developed by Sirriyeh et al. [41], which evaluates the methodological and reporting quality of the studies by ranking them against 16 quality criteria. The QATSDD is an established tool designed specifically to assess diverse evidence within systematic reviews in healthcare [41] and is, therefore, highly applicable to the literature included in this review. Reference searching and data extraction was conducted by one assessor (T.R.), with results validated by another assessor (A.W.).

2.4. Data Extraction and Synthesis

The articles’ heterogeneity and limited quantitative evidence excluded the use of statistical/quantitative analysis methods in this review [42,43]. Data were instead extracted and synthesised using an inductive content analysis approach [44]. This method is appropriate to distil and synthesise the identified literature in a way that defines key concepts [42,43,44]. Each article was read thoroughly, and open coding was applied. Codes were tabulated and then grouped to define overarching concepts that, when synthesised, describe 3DPLMs’ impacts on LCR surgical planning, intraoperative guidance, and patient outcomes.

3. Results

The articles identified for review constitute a highly heterogeneous body of literature, consisting of 11 case reports, of which 1 is an international conference paper [12] included to increase the review’s comprehensiveness [45]; and 11 original research studies, of which 3 employ a true experimental research methodology, 2 are quasi-experimental studies [15,35], 1 is a descriptive survey study [11], and 5 are observational studies [16,17,19,34,38]. Table 2 further summaries each article’s key characteristics.
The heterogeneous literature prompted quality assessment via the QATSDD from Sirriyeh et al. [41], the results of which are shown in Table 3. The QATSDD highlighted the major limitation of the selected articles—and by extension, the major limitation of this review itself—which is that there is a very limited proportion of methodologically rigorous research describing 3DPLMs’ applications in LCR. The majority of presented evidence is qualitative case-report evidence or is significantly lacking in methodological rigour or statistical significance. It is currently not possible to generalise findings to inform 3DPLM-LCR practice; however, clear themes emerge in this review that may have explanatory power concerning 3DPLMs’ utility in LCR, which may motivate future research efforts to rigorously evaluate the impact of 3DPLMs on LCR patients’ outcomes.

3.1. Surgical Planning and Intraoperative Decision Making

Thirteen articles (59.1%) reported that 3DPLMs enhanced surgical planning for LCR [11,13,14,15,16,17,19,22,29,31,32,33,40]. Seven of these articles were original research studies [11,15,16,17,19,29,31]; however, only two examined actual LCR cases [17,19]. The other five studied how patient-specific 3DPLMs improved resident/intern/medical student surgical planning and anatomical understanding [11,15,16,29,31], and their findings were less transferable to surgeons’ preoperative decision making.
Six articles (27.3%) described the utility of 3DPLMs for intraoperative guidance and navigation of the surgical field during LCR [9,13,19,22,33,40]. Only one original research article supported these findings [19] (the remaining five were case reports), limiting their generalisability.

3.2. 3DPLMs Can Enhance Patient Outcomes

None of the studies demonstrated statistically significant improvements in patients’ surgical outcomes; however, there was still considerable evidence (albeit primarily case-report-based) indicating that 3DPLMs can enhance LCR surgical planning and performance, and by extension, patients’ surgical outcomes [9,13,14,17,19,22,29,30,32,36,37,39,40]. An isolated study by Joo et al. [34] demonstrated that 3DPLMs can improve patients’ postoperative pathological staging and diagnosis by improving the tumour imaging–pathology matching detection rate.
Five articles (22.7%) described how 3DPLMs can enhance patients’ understanding of their pathology and proposed surgical intervention and improve their ability to provide informed consent [22,30,31,32,35]. Only two of these were original research articles [30,35].

3.3. Surgical Simulation and Clinical Education

Four articles (18.2%) described 3DPLMs for surgical simulation of LCR [14,22,38,39], while five articles (22.7%) demonstrated how 3DPLMs may enhance surgical/anatomical teaching [16,29,31,36,37]. These applications are less relevant to this review but suggest that 3DPLMs could improve the preparedness—and, by extension, the surgical performance—of more junior surgical staff.

3.4. Diversity of 3DPLM Production Methods

Table 2 demonstrates the diverse 3DP technologies and materials and varied times and costs involved in 3DPLM production. Fused filament fabrication (FFF) was the most common 3DP technology identified in this review (50%), followed by stereolithography (SLA) (13.6%) and selective laser sintering (SLS) (13.6%). These correlated with the frequently utilised 3DP materials, including acrylonitrile butadiene styrene (ABS) (22.7%), polylactic acid (PLA) (22.7%), and Polymide 12 (PA12, commonly known as nylon) (13.6%). Transparent silicone/silicone-like materials were used in 10 articles (45.5%) to represent liver parenchyma.
The imaging protocols, and segmentation and processing methods used also varied across the included articles. Nevertheless, 3DPLM accuracy was generally adequate for clinical use, with studies reporting CT-validated dimensional error of <0.7–2% [31,37,39] or no greater than a few millimetres [17,22,31]. The majority of studies (68.2%) created 3DPLMs using CT imaging data. Two studies exclusively used MRI datasets as per the preoperative protocol [9,34], and three studies used a combination of CT and MRI [11,14,31] datasets to segment their 3D models without distinction or comment.

3.5. Need for Experimental Research

Most articles described the need for true experimental research to prove the utility and feasibility of 3DPLMs in LCR surgical planning and intraoperative guidance and the benefit of 3DPLMs for patient LCR outcomes [13,15,16,17,19,30,34,35]. Research is also necessary to determine the best-practice approaches to 3DPLM production relative to time and monetary factors [12,16,17,35,36,39,40].

4. Discussion

Analysis of the 22 studies included in this review reveals several key findings, the first being that 3DPLMs can enhance surgical planning and intraoperative guidance of LCR by providing a more cognisable representation of patient liver anatomy and pathology. The improved comprehension of patient liver anatomy granted by 3DPLMs enhances surgical decision making and facilitates more targeted and accurate resections. 3DPLMs may, therefore, provide an overall benefit to LCR patient outcomes; however, further experimental research and clinical trials are necessary to confirm and quantify this relationship definitively.
Traditionally, LCR surgical planning is based on a patient’s CT and/or MRI imaging. The surgeon uses 2D axial/multiplanar images and 3DVRs to determine appropriate resection planes and vascular/biliary reconstruction approaches. This requires using images on a 2D screen to construct a 3D mental visualisation of sophisticated patient liver structures. 3DPLMs can facilitate this task by providing a transparent [13,14,15,16,17,22,31], colour-coded [12,15,16,19,22,32,34,35,36,40], tactile [11,14,15,16,40], manipulable [11,14,16,19,29,31,40] and highly cognisable [14,15,16,17,19,29,31] representation of individualised patient liver anatomy, which improves comprehension of the complex and highly variable 3D spatial relationships between intrahepatic structures [14,16,19,22,29,31,33,40] and enhances cognitive localisation of liver tumours [15,16,17,29], as demonstrated in Figure 2. The improved anatomical perception assists surgeons in selecting the most appropriate surgical strategies [11,14,16,17,19,29,33,40], resection planes [13,16,17,33,40], and vascular reconstruction approaches [13,40].
The above description of 3DPLMs’ preoperative value is drawn primarily from qualitative, case-report evidence, limiting its generalisability. In a prospective observational study, however, Witowski et al. [17] reported that using 3DPLMs in surgical planning of laparoscopic LCR resulted in preoperative changes to surgical strategy for four patients (21% of study sample) due to the models improving cognitive localisation of intrahepatic lesions. Lopez-Lopez et al. [31] performed a descriptive survey of HPB consultants, which indicated unanimously that 3DPLMs could improve preoperative understanding of intrahepatic spatial relationships and assist in defining the most appropriate LCR surgical strategies. These studies were limited by small sample sizes and were not truly experimental; however, they indicate 3DPLMs’ baseline utility in LCR surgical planning.
Further original research supporting 3DPLMs’ surgical planning value is limited to resident/intern populations. In a randomised controlled study, Cheng et al. [29] showed statistically significant improvement in interns’ surgical planning test scores when using 3DPLMs (vs. CT and 3DVRs). Yang et al. [16], in a prospective comparative study involving surgical residents, demonstrated that 3DPLMs (vs. CT and 3DVRs) resulted in statistically significant improvements in tumour localisation and surgical plan design. These studies were more methodologically rigorous than those by Witowski et al. and Lopez-Lopez et al.; however, they only demonstrated 3DPLMs’ surgical planning value for trainee liver surgeons.
This raises the question: Do qualified liver surgeons, who are capable of planning/performing LCR using medical images, actually receive significant benefit from 3DPLMs? In a quasi-experimental study, Huettl et al. [15] found no significant difference in the surgical planning abilities of HPB consultants and fellows when presented with either 3DPLMs or 3D-PDF liver models (equivalent to 3DVRs). This study’s methodology was limited, and it lacked comparison of 3DPLMs and 2D axial/multiplanar imaging, but it supported the idea that 3DPLMs may be superfluous for qualified surgeons [9,19]. 3DPLMs’ value may be limited, therefore, to particularly complex LCR cases, where lesions are located deeply among intrahepatic structures, or where underlying liver disease limits future liver remnant viability [9,13,17,19,31,40].
HPB surgeons must be proficient in correlating mental reconstructions of patient liver anatomy with the actual surgical field during an operation [19]. This is particularly important during laparoscopic procedures where there is restricted anatomical overview [12,17]. Several articles argue, therefore, of the benefits of 3DPLMs for intraoperative guidance during LCR [9,13,19,22,33,40]. 3DPLMs can be oriented and compared directly to the surgical field, improving comprehension and navigation of the viewed anatomy (Figure 3) [9,19,33]. In this application, 3DPLMs can be used to better locate and identify lesions for resection [9,13,19], verify the position of vascular structures to inform potential adjustments to the resection plane [19,33], and better comprehend the locations of deeper anatomical structures hidden within the liver parenchyma [13,19,22]. 3DPLMs may also improve intraoperative detection of smaller metastases to ensure removal [13], and they may decrease the likelihood of intraoperative complications such as damage to intrahepatic vessels [19] and liver devascularisation [13,40].
Again, these findings are not generalisable as they are drawn primarily from qualitative, case-report evidence. A prospective comparative study by Cheng et al. [19] was the only original research identified that demonstrates direct evidence of 3DPLMs’ intraoperative utility during LCR. In this study, the use of 3DPLMs for intraoperative guidance resulted in real-time changes to the surgical strategy for four patients in the 3DPLM group (16.7% of the study group) due to improved navigation of the surgical field (vs. no changes in the non-3DPLM group). This study was limited by its small sample size and heterogeneity of patient cases. The impact of 3DPLMs on intraoperative decision making in this study could also have been confounded by its surgeons using indocyanine green fluorescent staining as a supplementary navigation tool across the entire study population. Elsewhere, as with surgical planning, 3DPLMs’ utility for intraoperative guidance of LCR was demonstrated qualitatively and through case-report evidence, but currently lacks a methodologically rigorous backing. Similarly, it seems intraoperative use of 3DPLMs is likely mostly relevant for highly complex or laparoscopic cases [9,13,19].
Despite the reported preoperative and intraoperative value of 3DPLMs for LCR, this review identified no statistically significant evidence that 3DPLMs improve patients’ surgical outcomes. Only three studies included in this review recorded patients’ intra- and/or postoperative outcome data [19,30,33]. There were no statistically significant positive correlations identified between the use of 3DPLMs and patients’ future liver remnant volume, duration of surgery, intraoperative blood loss, resection margins, cancer reoccurrence, liver devascularisation, or postoperative liver failure.
The lack of statistical evidence does not disprove the potential benefit of 3DPLMs for patient outcomes. Instead, it is likely a product of there being no exhaustive experimental research with sample sizes large enough to overcome the heterogeneity of individual LCR cases [17,19,30,31]. Ultimately, there is considerable qualitative evidence that 3DPLMs can optimise LCRs and permit more targeted resections, which minimise complications. This should increase the likelihood of postoperative success and reduce the chances of morbidity, implying that 3DPLMs can directly improve LCR patients’ surgical outcomes.
A clear theme across the literature included in this review is the demand for methodologically rigorous, multi-institutional clinical trials to prove the clinical utility of 3DPLMs in LCR surgical planning and intraoperative guidance [13,15,16,17,19,30,34,35]. These trials must incorporate appropriate control groups and enrol sufficient patients to reach statistically significant conclusions [17,19]. One such study has been developed by Huber et al. [46] and is scheduled for completion during 2024. This type of research is crucial to progress 3DPLM technology past its current ‘proof-of-concept’ phase.
3DPLMs may also benefit patient outcomes by improving patients’ understanding of their pathology and surgical intervention [22,30,31,32,35]. In a randomised controlled trial, Giehl-Brown et al. [30] demonstrated statistically significant improvements in LCR patients’ surgical education when using 3DPLMs (vs. education sheets). Yang et al. [35] demonstrated statistically significant improvements in paediatric patients’ parents’ LCR understanding when consulted using 3DPLMs (vs. CT images). The latter study’s pre-test/post-test methodology likely confounds its results, but together these articles’ findings are consistent with other literature examining the patient education value of 3D-printed models [47,48,49].
Improving patients’ LCR knowledge using 3DPLMs should enhance their participation in preoperative decision making and ability to provide informed consent [30]. Greater health literacy following 3DPLM-based education may also improve their postoperative compliance, which then correlates positively with reduced length of hospital stay and decreased postoperative complications [30]. Although limited to gross specimens, 3DPLMs may also benefit patients’ postoperative diagnostic/staging outcomes by improving tumour imaging–pathology matching detection rate [34].
The 3DPLMs demonstrated by articles in this review can be divided into four categories as demonstrated in Figure 4: (1) single/large-piece 3D-printed parenchyma/tumour model; (2) 3D-printed intrahepatic structures model (with/without 3D-printed parenchyma casing); (3) 3D-printed intrahepatic structures model and parenchyma mould with casted/transparent parenchyma; (4) and simulation-specific hollow models.
Construction approach aside, 3DPLM production begins with a patient’s volumetric imaging data (typically CT or MRI) being post-processed (e.g., noise and blur reduction [12] and co-registration of multiphase CT volumes [13]/fusion of CT and MRI volumes [31]) and segmented to produce a 3D virtual liver/intrahepatic structures model [12]. The current literature aligns with the previous findings of Perica and Sun [20], demonstrating the predominant use of CT imaging data compared to MRI for segmentation of the 3D rendered models. Although MRI provides high soft tissue contrast useful in evaluating focal liver lesions, it is utilised less frequently for 3DPLM production due to its inferior spatial resolution and the limited availability of high-resolution 3T scanners [34]. CT is preferred, as its superior spatial resolution and ability to rapidly acquire contrast-enhanced images in multiple phases allows highly accurate and detailed delineation of intrahepatic vasculature while minimising patient motion artifacts [10]. This ultimately produces imaging datasets more conducive to accurate 3DPLM production. Higher spatial resolutions possible via CT also improve the accuracy and effectiveness of automatic and semi-automatic segmentation processes, better supporting 3DPLM production efficiency [10,20].
Segmentation involves digitally extracting the individual voxels within a patient’s imaging volume, which correspond to the liver parenchyma and separate intrahepatic structures and lesions [12,50]. Segmentations are exported in a file format—typically stereolithography (STL)—that uses a tessellated polygon mesh to represent the 3D hepatic structures’ surface geometries [12,14,15,16,22,34,35]. The 3D printer uses these files to produce a 3D-printed model [12]. Figure 5 demonstrates an example of a final STL rendering used for 3DPLM production, compared to a segmented CT image slice and original CT image slice from the corresponding patient imaging data.
The current ‘gold standard’ for diagnostic-use liver segmentation is a manual approach (i.e., voxel-by-voxel, slice-by-slice); however, this is highly laborious and time consuming [20,51]. Accordingly, the articles in this review use combinations of semi-automatic and automatic segmentation techniques, including adaptive region growing [13,17,31,32,35] and threshold filtering [17,32] (i.e., region-based techniques [50]); and active contour algorithms [13,31] (i.e., boundary-based techniques [50]). These algorithm-based approaches automatically isolate and segment liver/intrahepatic tissues based on homogeneities and/or changes in local voxel/tissue intensity [50]. They increase segmentation efficiency considerably, but still require time-consuming manual validation and correction [11,16,17,35,51,52,53].
A major limitation of 3DPLMs is their time and monetary costs [9,11,13,14,15,16,17,19,31,35,36]. Average 3DPLM production times across the reviewed articles were ~24 h, owing to the laborious nature of segmentation and wait times during the 3DP process [14,15,35]. Ongoing research aims to increase the efficiency and reproducibility of automatic liver segmentation using artificial intelligence to reduce 3DPLM production times [12]. The average cost of 3DPLMs in this review ranged from ~USD 100 to ~USD 2000 (excludes software and 3D printer costs). Costs should decrease as 3DP technology becomes more accessible; however, they currently limit the 3DPLMs’ feasibility for day-to-day clinical use [16,19,31,33,35,40].
3DPLMs’ clinical feasibility must be considered against their 3DP technology [22]. For example, an FFF 3DPLM’s resolution is limited by the FFF printer’s nozzle diameter [21]. Lesions and vessels smaller than this diameter cannot be printed [21]. It is possible to artificially increase the diameter of lesions that are otherwise too small to print, as demonstrated by Joo et al. [34]; however, this approach undermines dimensional accuracy. It could not be used for a 3DPLM used to guide a millimetre-precise LCR—instead, a more advanced, and likely more expensive, 3D printer technology would be required. In contrast, a patient education 3DPLM could sacrifice millimetre accuracy to reduce costs. This illustrates the need for research that standardises and validates which 3DP technologies and 3DPLM types are most feasible and cost-effective for different 3DPLM clinical applications [17,39].
Ultimately, the selection of 3D printing methods and materials depends on the 3DPLM’s clinical application. SLA 3D printing methods use photopolymers to create transparent or opaque resin models with high detail, which may assist in surgical planning, while SLS technology often uses nylon to produce models with high elasticity, strength, and heat resistance for surgical training. Despite the aforementioned limitations of FFF 3D printing, this method is popular as it is suitable to use with a range of materials with different properties and produces minimal waste. ABS and PLA produce tough, rigid models and are some of the most affordable materials used in FFF 3D printing. Brown et al. [30] reported statistically significant improvements in patient education supported by PLA FFF 3DPLMs. The low cost of production in this context is particularly encouraging for further research. Alternatively, FFF can be used to create more flexible 3D models from elastomers. Estermann et al. [38] demonstrated several silicone elastomer materials, and Tejo-Otero et al. [39] demonstrated agarose, or a 1:1 mixture of polyvinyl alcohol and phytagel, as potential 3DPLM materials that mimic biological liver tissue. They point toward an exciting future where patient-specific, tissue-life-like 3DPLMs can be used to preoperatively rehearse and perfect complex patient LCRs [14,22,36,38,39].

5. Conclusions

There is significant qualitative and case-report evidence that 3DPLMs strengthen pre- and intraoperative comprehension of liver and tumour anatomy by providing accurate and highly cognisable 3D representations of patients’ individualised intrahepatic structures. This improved anatomical comprehension can optimise preoperative decision making and enhance intraoperative surgical performance for LCR. Future research should look to determine the clinical value and feasibility of 3DPLMs for LCR surgical planning and intraoperative guidance in terms of patients’ direct surgical outcomes, and the monetary and time costs associated with different 3DPLM production methods.

Author Contributions

Conceptualisation, T.R.; investigation, T.R.; methodology, T.R.; formal analysis, T.R. and A.W.; writing—original draft preparation, T.R.; writing—review and editing, T.R., A.W. and Z.S.; visualisation, T.R.; supervision, Z.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research was supported by a Perth Radiological Clinic Foundation Grant.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. PRISMA flow chart of literature search process.
Figure 1. PRISMA flow chart of literature search process.
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Figure 2. Three-dimensional spatial location and relationship of liver tumour (T) with intrahepatic anatomy can be better appreciated using 3DPLM (right) compared to CT (left). Reprinted with permission under the open access from Cheng et al. [29].
Figure 2. Three-dimensional spatial location and relationship of liver tumour (T) with intrahepatic anatomy can be better appreciated using 3DPLM (right) compared to CT (left). Reprinted with permission under the open access from Cheng et al. [29].
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Figure 3. Comparison of 3DPLM to the surgical field shows that it enhances identification of key structures. vB5: the ventral bile duct of segment 5, dB5: the dorsal bile duct of segment 5, B8: the bile duct of segment 8, RAB: right anterior bile duct, RHV: right hepatic vein, RHV-V5: the venous reflux of hepatic segment 5 to RHV, RHV-V6: the venous reflux of hepatic segment 6 to RHV. Reprinted with permission under the open access from Cheng et al. [19].
Figure 3. Comparison of 3DPLM to the surgical field shows that it enhances identification of key structures. vB5: the ventral bile duct of segment 5, dB5: the dorsal bile duct of segment 5, B8: the bile duct of segment 8, RAB: right anterior bile duct, RHV: right hepatic vein, RHV-V5: the venous reflux of hepatic segment 5 to RHV, RHV-V6: the venous reflux of hepatic segment 6 to RHV. Reprinted with permission under the open access from Cheng et al. [19].
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Figure 4. Comparison of four different 3DPLM construction approaches. (1) Single/large-piece 3D-printed parenchyma/tumour model; (2) 3D-printed intrahepatic structures model (with/without 3D-printed parenchyma casing); (3) 3D-printed intrahepatic structures model and parenchyma mould with casted/transparent parenchyma; (4) simulation-specific hollow models. Image 1 (top left) reprinted with permission under the open access from Tooulias et al. [32]. Image 2 (top right) reprinted with permission under the open access from Cheng et al. [29]. Image 3 (bottom left) reprinted with permission under the open access from Huettl et al. [15]. Image 4 (bottom right) reprinted with permission under the open access from Tan et al. [37].
Figure 4. Comparison of four different 3DPLM construction approaches. (1) Single/large-piece 3D-printed parenchyma/tumour model; (2) 3D-printed intrahepatic structures model (with/without 3D-printed parenchyma casing); (3) 3D-printed intrahepatic structures model and parenchyma mould with casted/transparent parenchyma; (4) simulation-specific hollow models. Image 1 (top left) reprinted with permission under the open access from Tooulias et al. [32]. Image 2 (top right) reprinted with permission under the open access from Cheng et al. [29]. Image 3 (bottom left) reprinted with permission under the open access from Huettl et al. [15]. Image 4 (bottom right) reprinted with permission under the open access from Tan et al. [37].
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Figure 5. Baseline CT image (left) vs. segmented image (middle) where green = tumour, yellow = liver parenchyma, pink = arterial vasculature, blue = venous vasculature, vs. final STL 3D rendering (right) demonstrating corresponding anatomical structures. Reproduced with permission under the open access from Witowski et al. [17].
Figure 5. Baseline CT image (left) vs. segmented image (middle) where green = tumour, yellow = liver parenchyma, pink = arterial vasculature, blue = venous vasculature, vs. final STL 3D rendering (right) demonstrating corresponding anatomical structures. Reproduced with permission under the open access from Witowski et al. [17].
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Table 1. Search strategies to identify suitable studies for inclusion in the review.
Table 1. Search strategies to identify suitable studies for inclusion in the review.
Search No.Boolean OperatorTermField
Search
Strategy 1
hepat* OR liverTitle
ANDprint* OR model*Title
AND3D OR 3-dimensional OR three-dimensional OR “3D-printed” OR “3D-printing”Title
ANDtumour* OR tumor* OR cancer* OR carcinoma* OR malignan* OR metas*Any field
ANDsurg* OR oper*Any field
ANDpatient* OR segment*Any field
Search
Strategy 2
hepa* OR liverTitle
ANDprint* OR model*Title
AND3D OR 3-dimensional OR three-dimensional OR “3D-printed” OR “3D-printing”Title
AND3D-print* OR “3D print” OR “3D printing”Any field
ANDtumour* OR tumor* OR cancer* OR carcinoma* OR malignan* OR metast *Any field
ANDoutcom* OR patien* OR consent* OR duration OR time OR success OR morbidity OR result*Any field
Search
Strategy 3
“medical imaging” OR “computed tomography” OR CT OR “magnetic resonance imaging” OR MRITitle
AND3D OR 3-dimensional OR three-dimensional OR “3D-printed” OR “3D-printing”Title
ANDprint* OR model*Title
ANDliver OR hepat*Any field
The asterisk (*) placed at the end of search terms above is a wildcard search operator which automatically includes alternate endings of that word in the search (eg. ‘hepat*’ will include, ‘hepatobiliary’, ‘hepatic’, ‘hepatectomy’, etc.).
Table 2. Study characteristics and key findings in eligible articles.
Table 2. Study characteristics and key findings in eligible articles.
ArticlePurposeCountry of OriginStudy DesignSampleImaging Modality/3D Modelling Software/3DP Method3DP Materials/
Production Costs and Time
Relevant Findings
Rhu et al. [9] (2021)Produce a 3DPLM to guide surgical planning and intraoperative procedure for a complex LCR case.KoreaCase reportPatient w/hepatocellular carcinoma and intrahepatic metastases
n = 1
MRI
Mimics
FFF
3DP materials N/P
USD 15 material costs
6 h. printing time
3DPLM improved understanding of tumour location during preoperative planning and improved comprehension of the surgical field intraoperatively to guide resection.
Streba et al. [11] (2018)Design a reproducible, cost-effective method for liver tumour 3DP, which incorporates tissue stiffness information.RomaniaDescriptive
survey
Medical students
n = 43
Residents
n = 12
CT and MRI
InVesalius 3.1.1, Meshmixer, UP Studio
FFF
Co-polyester filament material
Production cost N/P
Time N/P
3DP liver tumour models may demonstrate clinical utility in resection surgical planning and education.
Guachi
et al.
[12] (2021)
Develop a workflow to produce individualised 3DPLMs from medical imaging data.ItalyCase reportPatient w/liver
tumour
n = 1
CT
Mimics and Slicer
FFF
PLA
Production cost N/P
Time N/P
FFF approach to 3DP provides balance between quality, time, and cost; however, it cannot mimic liver tissue characteristics for surgical simulation.
Huber et al. [13] (2021)Explore how 3DPLMs assist preoperative planning of complex LCR.GermanyCase reportLiver surgery cases
n = 10
CT
Cella Medical Solutions
Methods N/P
TPUR–parenchyma,
ABS–intrahepatic structures
EUR 1500–2000 cost per case
10-day production time
3DPLMs improved preoperative planning for resection planes and liver vascular reconstruction.
3DPLMs improved intraoperative detection of small/deeply located metastases.
Muguruza Blanco et al. [14] (2019)Produce a patient-individualised 3DPLM with functionalised internal surfaces for use in surgical planning.SpainCase reportPatient w/hepatic metastases
n = 1
CT and MRI
Mimics, Meshmixer, Keyshot
FFF
PLA and PVA–3DP mould
+ 3 silicone rubbers tested
~EUR 120 per model
~10 h. segmentation and rendering time per model
Translucent, soft 3DPLMs assisted surgical simulation and planning by allowing surgeons to rehearse surgical incisions while viewing the spatial relationships between intrahepatic structures.
Huettl et al. [15] (2021)Compare the clinical utility of 3DPLMs, 3D virtual reality, and 2D imaging for preoperative planning of LCR.GermanyQuasi-
experimental
HPB doctors and medical students
n = 30
CT
Synapse 3D
Cella Medical Solutions
Methods N/P
TPUR–parenchyma
ABS–intrahepatic structures
Production cost N/P
Time N/P
Use of 3DPLM improved participants’ accuracy and speed in identifying the locations of liver tumours.
Yang et al. [16] (2019)Investigate if 3DPLMs improve appreciation of surgical anatomy.ChinaProspective
comparative
Surgical residents
n = 45
CT
Mimics 14.01, PolyJet Studio 3D
FFF
Transparent photopolymers
~USD 1200 production cost
Time N/P
3DPLMs improved participants’ ability to correctly assign tumour location and provide appropriate resection plans.
Witowski
et al.
[17] (2020)
Evaluate the impact of 3DPLMs on preoperative decision making for laparoscopic LCR.PolandProspective
observational
Patients w/liver malignancies undergoing laparoscopic liver resection
n = 19
CT
3D Slicer
FFF
PLA–intrahepatic structures
Transparent silicone–parenchyma
Production cost N/P
~5 days production time
3DPLMs changed the preoperative surgical plan for several patients by providing better comprehension of spatial relationships between liver lesions and vasculature.
Cheng et al. [19] (2022)Method to improve the efficiency and cost of 3DPLM production. Explore the value of 3DPLMs for complex laparoscopic hepatectomy.ChinaProspective
comparative
Patients w/HPB cancer for laparoscopic resection
n = 54
CT
E3D, Ultimaker Cura
SLA
Photosensitive resin
USD 104.40 μ production cost
56.8 h. μ production time
3DPLMs assisted surgical planning and intraoperative decision making, although there were no significant differences in patient outcomes between the 3DP and non-3DP groups.
Valls-
Esteve et al.
[22] (2023)
Cost-effective approach to producing patient-individualised 3DPLMs for use in surgical simulation and training.SpainCase reportPaediatric patients w/liver tumours
n = 3
CT
IntelliSpace Portal
FFF and SLS
PLA, PA12, silicone
~EUR 500 per model
8–24 h. per model
Transparent, soft silicone ‘parenchyma’ cast inside 3DP mould enhanced surgical planning and allowed physical practice/rehearsal using surgical equipment.
Cheng et al.
[29] (2023)
Compare the value of 3DPLMs, 3D virtual reconstruction, and 2D imaging for resection surgical planning and intern education.ChinaRandomised-
controlled
HPB surgery interns
n = 62
CT
E3D, Ultimaker Cura
SLA
Photosensitive resin
Production cost N/P
Time N/P
3DPLMs significantly improved participants’ ability to identify correct tumour location and design appropriate surgical plans (p < 0.05).
Giehl-Brown
et al.
[30] (2023)
Evaluate the impact of 3DPLMs on patients’ understanding and satisfaction with surgical education in HPB surgery.GermanyRandomised
controlled
Patients presenting for liver surgery
n = 40
CT
Meshmixer, Ultimaker Cura 4.7, w/segmentation by MeVis
FFF
PLA
Production cost N/P
Time N/P
No significant differences in patient outcomes between 3DP and non-3DP groups; however, 3DP group demonstrated increased understanding of their disease and surgery.
Lopez-Lopez
et al.
[31] (2021)
Validate the accuracy of 3DPLMs and evaluate their utility for LCR surgical planning, teaching, and provision of patient information.SpainCase report,
descriptive survey, randomised controlled
Patients w/hepatic malignancies
n = 35
HPB surgeons n = 23 Medical students n = 75
CT and MRI
3D-MSP
3DP method N/P
TPUR–parenchyma
ABS–intrahepatic structures
EUR 950 production cost
22 h. production time
3DPLMs assisted surgical planning and education and improved patient understanding of their pathology and proposed surgical procedure but did not affect the surgical outcome.
Tooulias
et al.
[32] (2021)
Produce an accurate, patient-individualised 3DPLM containing a tumour for resection.GreeceCase reportPatient w/liver malignancy for resection
n = 1
CT
3D model software N/P
3DP method N/P
3DP materials N/P
Production cost N/P
Time N/P
Use of 3DPLMs may facilitate more targeted tissue resection to preserve a greater volume of healthy parenchyma.
Li et al.
[33] (2021)
Explore the value of 3DPLMs as intraoperative tools to assist LCR. ChinaCase reportPatients w/liver malignancies for resection
n = 8
CT
Mimics 20.0
SLS
Nylon (polyamide)
Production cost N/P
~2-day production time
3DPLMs assist individualised surgical planning and can be used intraoperatively to enhance navigation of the surgical field.
Joo et al. [34] (2019)Investigate the clinical utility of 3DPLMs for imaging–pathology matching.KoreaProspective
comparative
Patients w/multi-focal liver malignancies
n = 20
MRI
MEDIP
FFF
ABS–intrahepatic structures Transparent silicone–parenchyma
Production cost N/P
Time N/P
3DPLMs improved detection rate for imaging–pathology matching during gross pathological examination, suggesting their value in cancer diagnosis and staging.
Yang et al. [35] (2018)Evaluate if patient understanding of hepatic anatomy, pathology, and surgery is improved with the use of 3DPLMs.ChinaQuasi
experimental
pre-test post-test
Parents of children w/liver malignancies for partial hepatectomy
n = 14
CT
Mimics 14.01
SLA
Photosensitive resin
~USD 450 USD per model
~8 h. segmentation time
Use of 3DPLMs improved parental understanding of liver anatomy, pathology, and proposed surgical procedures.
Smillie et al.
[36] (2021)
Provide a method for producing 3DPLMs for use in surgical and anatomical teaching.United KingdomCase report3DPLM
n = 1
CT
Simpleware ScanIP, GrabCAD, Meshmixer
Material jetting
Opaque photopolymers
GBP 1343 material cost
58 h. printing time
3DPLMs offer a realistic alternative to cadaveric teaching, but must be developed to mimic liver tissue characteristics to maximise surgical simulation applications.
Tan et al.
[37] (2021)
Produce a 3DP liver phantom with hollow biliary structures for use in surgical planning and simulation.GermanyCase report3DPLM
n = 1
N/A
SolidWorks, Meshmixer
FFF and material jetting
Rubber-like photopolymer, ABS, silicone rubber
Production cost N/P
Time N/P
3DPLM accurately replicated the liver and was suitable for surgical simulation.
Estermann
et al.
[38] (2020)
Identify materials suitable for 3DPLM production, which mimic the characteristics of biological liver tissue.AustriaQuantitative
comparative
Biological liver tissue samples
n = 36
N/A
3D model software N/A
FFF
Rubber-like photopolymer, silicones
Production cost N/A
Time N/A
Rubber-like photopolymer 3DP material was the least accurate liver tissue mimic, while some silicone elastomer materials demonstrated useful tissue-mimicking qualities.
Tejo-Otero
et al.
[39] (2020)
Determine a 3DP material that mimics liver tissue properties and produce a life-like 3DPLM for surgical simulation.SpainCase report3DPLM
n = 1
CT
IntelliSpace Portal
SLS
PA12–3DP mould
Multiple liver-mimicking materials tested
EUR 513 total production cost
Time N/P
1:1 mixed composition of 6%wt polyvinyl alcohol/1%wt phytagel and 1%wt agarose closely mimics biological liver tissue qualities.
Laureiro
et al.
[40] (2020)
Describe the utility of a 3DPLM for preoperative planning and intraoperative guidance of a complex LCR.ItalyCase reportPatient w/liver cancer
n = 1
CT
3D model software N/P
3DP method N/P
3DP materials N/P
~EUR 1200 production cost
~35 h. total production time
3DPLM improved surgeons’ ability to identify optimal dissection plane and vascular reconstruction approach.
Abbreviations—HBP: hepatopancreatobiliary, CT: computed tomography, FFF: fused filament fabrication, MRI: magnetic resonance imaging, 3DP: 3D printed, 3DPLMs: 3D-printed liver models, TPUR: transparent polyurethane rubber, ABS: acrylonitrile butadiene styrene, PLA: polylactic acid, PVA: polyvinyl alcohol, SLA: stereolithography, SLS: selective laser sintering, PA12: Polymide 12, N/A: not available, N/P: not provided. Credits—Mimics (Materialise, Leuven, Belgium), InVesalius (Renato Archer Information Technology Center, Campinas, Brazil), Meshmixer (Autodesk Inc., San Francisco, CA, USA), UP Studio (Tiertime Technology Co., Ltd., Beijing, China), Slicer (open source, slicer.org), Cella Medical Solutions (external service provider), Keyshot (Luxion, Costa Mesa, CA, USA), Synapse 3D (FUJIFILM Europe GmbH, Düsseldorf, Germany), E3D (Central and Southern E3D Digital Medical and Virtual Reality Research Center, Beijing, China), Ultimaker Cura (Ultimaker, New York, NY, USA), IntelliSpace Portal (Philips, The Netherlands) 3D-MSP (Cella Medical Solutions, Bajo, Spain), MEDIP (MEDICALIP Co., Ltd., Seoul, Republic of Korea), Simpleware ScanIP (Synopsys Inc., Sunnyvale, CA, USA), GrabCAD (Stratasys, Edina, MN, USA), SolidWorks (Dassault Systèmes SE, Velizy-Villacoubla, France), IntelliSpace Portal (Philips, The Netherlands).
Table 3. Quality assessment of articles using scoring developed by Sirriyeh et al. [41].
Table 3. Quality assessment of articles using scoring developed by Sirriyeh et al. [41].
ArticleExplicit Theoretical FrameworkStatement of Aim/
Objective
Research Setting
Description
Sample Size
Considered in Terms of Analysis
Reasonably Sized and Representative Sample Data
Collection Procedure Described
Data
Collection Tool(s)
Rationale
Detailed
Recruitment Data
Assesses Measurement Tool Reliability/ValidityQuestion Correlates to Data
Collection Method
Question Correlates to Data
Collection Tool
Question Correlates to Analysis MethodJustification for
Analytical Method
Reliability of Analytical Process AssessedUser Involvement in DesignStrengths and LimitationsQuality Assessment
Rhu et al. [9] (2021)N/A32N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A16/9
66.7%
Streba et al. [11] (2018)1320120101N/A00N/A0011/42
26.2%
Guachi
et al. [12] (2021)
N/A32N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A16/9
66.7%
Huber et al. [13] (2021)N/A11N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A02/9
22.2%
Muguruza Blanco et al. [14] (2019)N/A32N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A16/9
66.7%
Huettl et al. [15] (2021)121023121000010216/48
33.3%
Yang et al. [16] (2019)1310110112N/A30N/A0115/42
35.7%
Witowski
et al. [17] (2020)
1320100202N/AN/AN/AN/A2316/36
44.4%
Cheng et al. [19] (2022)1311220210N/A01N/A0216/42
38.1%
Valls-Esteve
et al. [22] (2023)
N/A32N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A16/9
66.7%
Cheng et al. [29] (2023)2330232212N/A20N/A0123/42
54.8%
Giehl-Brown
et al. [30] (2023)
3330230303N/A20N/AN/A224/39
61.5%
Lopez-Lopez
et al. [31] (2021)
1320221122N/A22N/A0222/42
52.4%
Tooulias
et al. [32] (2021)
N/A11N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A02/9
22.2%
Li et al. [33] (2021)N/A32N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A05/9
55.6%
Joo et al. [34] (2019) 1310120213N/A30N/A0219/42
45.2%
Yang et al. [35] (2018)1130120201N/A21N/A0216/42
38.1%
Smillie et al. [36] (2021)N/A33N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A28/9
88.9%
Tan et al. [37] (2021)N/A33N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A06/9
66.7%
Estermann
et al. [38] (2020)
132N/AN/A33N/A23N/A33N/A0326/33
78.8%
Tejo-Otero
et al. [39] (2020)
N/A33N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A17/9
77.8%
Laureiro
et al. [40] (2020)
N/A23N/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/AN/A16/7
66.7%
The 16 criteria listed above were scored for each article based on the degree to which that article met those criteria, as outlined by Sirriyeh et al. [40]. 0 = Not at all, 1 = Very slightly, 2 = Moderately, 3 = Completely. Criteria not applicable to an article were marked N/A and excluded from the final quality assessment percentage score calculation.
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Rossi, T.; Williams, A.; Sun, Z. Three-Dimensional Printed Liver Models for Surgical Planning and Intraoperative Guidance of Liver Cancer Resection: A Systematic Review. Appl. Sci. 2023, 13, 10757. https://doi.org/10.3390/app131910757

AMA Style

Rossi T, Williams A, Sun Z. Three-Dimensional Printed Liver Models for Surgical Planning and Intraoperative Guidance of Liver Cancer Resection: A Systematic Review. Applied Sciences. 2023; 13(19):10757. https://doi.org/10.3390/app131910757

Chicago/Turabian Style

Rossi, Timothy, Ally Williams, and Zhonghua Sun. 2023. "Three-Dimensional Printed Liver Models for Surgical Planning and Intraoperative Guidance of Liver Cancer Resection: A Systematic Review" Applied Sciences 13, no. 19: 10757. https://doi.org/10.3390/app131910757

APA Style

Rossi, T., Williams, A., & Sun, Z. (2023). Three-Dimensional Printed Liver Models for Surgical Planning and Intraoperative Guidance of Liver Cancer Resection: A Systematic Review. Applied Sciences, 13(19), 10757. https://doi.org/10.3390/app131910757

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