Medical Opinions Analysis about the Decrease of Autopsies Using Emerging Pattern Mining
Abstract
:1. Introduction
2. State of the Art
3. Materials and Methods
3.1. Data Set
3.2. EPM-Framework
3.3. EPM Algorithms
- Tree-based JEP-C is a highly efficient algorithm designed to discover jumping emerging patterns (JEPs). JEPs are emerging patterns specific to a single class and similar to other discriminative patterns in their role of highlighting class distinctions and facilitating the creation of accurate classifiers [43]. Two aspects characterize tree-based JEP-C [44]: the first is the storage of unprocessed data using a tree-based data structure, and the second objective is the creation of an algorithm for data extraction that operates directly on the data contained in the trees. This approach obtained considerable performance gains over others.
- The iEPMiner algorithm employs a tree data structure for mining interesting emerging patterns, where the chi-squared test is used as a heuristic to optimize and simplify the search process. This strategic use of the chi-squared test enhances the algorithm’s speed, making it exceptionally efficient. Notably, the heuristic consistently identifies the majority, namely 90%, of the most interesting emerging patterns (EPs), a capability sufficient for constructing highly accurate classifiers in various real-world applications [45].
- SJEP-C is a rapid, precise, and simplified classifier based upon parts of strong jumping emerging patterns (SJEPs), a form of JEPs. EPs are considered strong when they are both JEPs and minimal. Minimal EPs, i.e., EPs whose sub-patterns are not EPs, are of particular interest because they typically encompass a limited number of variables. Therefore, SJEPs have both understandability and predictive power [22]. The algorithm’s mining process for SJEPs relies on a contrast pattern tree (CP-tree) as its foundational framework. SJEP-C consistently demonstrates reliability, exhibiting high effectiveness in classifying diverse data sets. Remarkably, it often attains superior accuracy compared to other cutting-edge classifiers such as Nave Bayes, Random Forest, and C4.5 [42].
- The Top-k minimal SJEPs algorithm [44] addresses the challenge of efficiently extracting the k minimal JEPs that are highly prevalent in each decision class. This result is particularly valuable because traditional JEP discovery can be time-consuming, and pruning with minimal support requires various settings. For improvement, the Top-k Minimal SJEPs method employs a CP-tree to identify strong JEPs. The search space is reduced using the minimum support, and the algorithm dynamically increases this support threshold as it discovers new minimal JEPs. The algorithm verifies the minimality of each newly found JEP in real time instead of at the end of the process. This approach results in considerable time and pattern examination savings, especially when the objective is to determine a limited number of highly compatible JEPs.
- LCMine is an efficient algorithm designed to discover discriminative patterns within training data sets comprising distinct and insufficient data, primarily for supervised classification tasks. This algorithm relies on decision tree induction and incorporates a filtering stage. This filtering stage helps to identify a reduced set of better discriminative attributes for each category. In particular, LCMine has three key features that set it apart: (1) it is not based on a priori discretization when handling numerical attributes, which distinguishes it from the majority of algorithms commonly used to extract discriminative patterns; (2) it utilizes an in-depth description of the regularities; and (3) it employs a filtering method to delete the redundant regularities [38].
4. Experimental Results and Discussion
- Speed. The time in seconds it takes to execute each algorithm. After each algorithm was executed ten times, the average execution time is shown.
- CONF. The precision of a pattern’s predictive ability for the positive class is known as its confidence.
- Patterns with confidence > 0.6. In the test data set, EPM-Framework allows for obtaining a file containing patterns with a confidence value larger than 0.6.
- Patterns. Pattern count.
- FPR. The False Positive Rate measures the ratio of incorrectly covered examples compared to the total number of negative examples and must be minimal.
- GR. The Growth Rate is a metric used to characterize emerging patterns. It determines the ratio of positive patterns’ support to negative patterns’ support, and it is regarded as a pattern’s ability to discriminate.
- WRACC. The Weighted Relative Accuracy assesses the compromise between pattern generality and confidence.
- TPR. The True Positive Rate is the ratio of correct examples to the total positive examples.
4.1. Analysis and Discussion of the Data Set Considering as the Class Label to the Attribute Family_refusal
4.2. Analysis and Discussion of the Data Set Considing as the Class Label to the Attribute Underperforming_hsosp
4.3. Analysis and Discussion of the Data Set Considering as the Class Label to the Attribute Appropriate_pers
4.4. Analysis and Discussion of the Data Set Considering as the Class Label to the Attribute Physician_request
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
- Hurtado de Mendoza Amat, J. La autopsia como garantía de calidad en la medicina. Rev. Cuba. Salud Pública 2017, 43, 468–469. [Google Scholar]
- Coradazzi, A.L.; Morganti, A.L.C.; Montenegro, M.R.G. Discrepancies between clinical diagnoses and autopsy findings. Braz. J. Med. Biol. Res. 2003, 36, 385–391. [Google Scholar] [CrossRef] [PubMed]
- Suleiman, D. Reviving hospital autopsy in Nigeria: An urgent call for action. Ann. Niger. Med. 2015, 9, 39. [Google Scholar] [CrossRef]
- Park, J.P.; Kim, S.H.; Lee, S.; Yoo, S.H. Changes in Clinical and Legal Autopsy Rates in Korea From 2001 to 2015. J. Korean Med. Sci. 2019, 34, e301. [Google Scholar] [CrossRef] [PubMed]
- Blokker, B.M.; Weustink, A.C.; Hunink, M.G.M.; Oosterhuis, J.W. Autopsy rates in the Netherlands: 35 years of decline. PLoS ONE 2017, 12, e0178200. [Google Scholar] [CrossRef] [PubMed]
- Latten, B.G.H.; Overbeek, L.I.H.; Kubat, B.; zur Hausen, A.; Schouten, L.J. A quarter century of decline of autopsies in the Netherlands. Eur. J. Epidemiol. 2019, 34, 1171–1174. [Google Scholar] [CrossRef] [PubMed]
- Waidhauser, J.; Martin, B.; Trepel, M.; Markl, B. Can low autopsy rates be increased? Yes, we can! Should postmortem examinations in oncology be performed? Yes, we should! A postmortem analysis of oncological cases. Virchows Arch. 2021, 478, 301–308. [Google Scholar] [CrossRef] [PubMed]
- Sinard, J.H. Factors Affecting Autopsy Rates, Autopsy Request Rates, and Autopsy Findings at a Large Academic Medical Center. Exp. Mol. Pathol. 2001, 70, 333–343. [Google Scholar] [CrossRef]
- Chariot, P.; Witt, K.; Pautot, V.; Porcher, R.; Thomas, G.; Zafrani, E.S.; Lemaire, F. Declining Autopsy Rate in a French Hospital Physicians’ Attitudes to the Autopsy and Use of Autopsy Material in Research Publications. Arch. Pathol. Lab. Med. 2000, 124, 739–745. [Google Scholar] [CrossRef]
- Davies, D.J.; Graves, D.J.; Landgren, A.J.; Lawrence, C.H.; Lipsett, J.; MacGregor, D.P.; Sage, M.D. The decline of the hospital autopsy: A safety and quality issue for healthcare in Australia. Med. J. Aust. 2004, 180, 281–285. [Google Scholar] [CrossRef]
- Kunz, S.N.; Bergsdóttir, Þ.; Jónasson, J.G. Autopsy rates in Iceland. Scand. J. Public Health 2019, 48, 486–490. [Google Scholar] [CrossRef] [PubMed]
- Bhatt, M.; Movaseghigargari, M.; Chand, M.T. The importance of autopsies despite the declining number amidst the COVID-19 pandemic. Autops. Case Rep. 2022, 12, e2021371. [Google Scholar] [CrossRef] [PubMed]
- Kalra, J.; Macpherson, J. The Decline of the Hospital Autopsy: A Missed Opportunity for Quality and Education in Healthcare. Austin J. Clin. Pathol. 2015, 2, 1024. [Google Scholar]
- Kapusta, N.D.; Tran, U.S.; Rockett, I.R.; De Leo, D.; Naylor, C.P.; Niederkrotenthaler, T.; Voracek, M.; Etzersdorfer, E.; Sonneck, G. Declining Autopsy Rates and Suicide Misclassification: A Cross-national Analysis of 35 Countries. Arch. Gen. Psychiatry 2011, 68, 1050–1057. [Google Scholar] [CrossRef] [PubMed]
- Rubio Delgado, E.; López-Chau, A.; Cervantes, J.L.S.; Cervantes, J.; Palet Guzmán, J.A.; Peláez-Camarena, S.G.; López-Chau, A. Analysis of Medical Opinions about the Nonrealization of Autopsies in a Mexican Hospital Using Association Rules and Bayesian Networks. Sci. Program. 2018, 4304017. [Google Scholar] [CrossRef]
- Leskovec, J.; Rajaraman, A.; Ullman, J. Mining of Massive Data Sets, 3rd ed.; Standford University: Stanford, CA, USA, 2019. [Google Scholar]
- Han, J.; Kamber, M.; Pei, J. Data Mining: Concepts and Techniques; Elsevier: Boston, MA, USA, 2012. [Google Scholar]
- Tan, P.N.; Steinbach, M.; Karpatne, A.; Vipin, K. Introduction to Data Mining; Pearson: New York, NY, USA, 2019. [Google Scholar]
- Bhatia, P. Data Mining and Data Warehousing: Principles and Practical Techniques, 1st ed.; Cambridge University Press: Cambridge, UK, 2019. [Google Scholar]
- Carmona, C.J.; Jesus, M.J.; Herrera, F. Atipicidad: Medida de calidad clave dentro del descubrimiento de reglas descriptivas supervisadas. In Proceedings of the XVIII Conferencia de la Asociación Española para la Inteligencia Artificial, IX Simposio de Teoría y Aplicaciones de la Minería de Datos, Granada, Spain, 23–26 October 2018; pp. 827–828. [Google Scholar]
- GitHub—SIMIDAT/Epm-Framework: A Framework to Easy Execute Emerging Pattern Mining (EPM) Algorithms. Available online: https://github.com/SIMIDAT/epm-framework (accessed on 29 August 2023).
- García-Vico, A.M.; Carmona, C.J.; Martín, D.; García-Borroto, M.; del Jesus, M.J. An overview of emerging pattern mining in supervised descriptive rule discovery: Taxonomy, empirical study, trends, and prospects. Wiley Interdiscip. Rev. Data Min. Knowl. Discov. 2017, 8, e1231. [Google Scholar] [CrossRef]
- Reps, J.M.; Aickelin, U.; Hubbard, R.B. Refining adverse drug reaction signals by incorporating interaction variables identified using emergent pattern mining. Comput. Biol. Med. 2016, 69, 61–70. [Google Scholar] [CrossRef]
- Davazdahemami, B.; Delen, D. Examining the effect of prescription sequence on developing adverse drug reactions: The case of renal failure in diabetic patients. Int. J. Med. Inform. 2019, 125, 62–70. [Google Scholar] [CrossRef]
- Métivier, J.P.; Lepailleur, A.; Buzmakov, A.; Poezevara, G.; Crémilleux, B.; Kuznetsov, S.O.; Le Goff, J.; Napoli, A.; Bureau, R.; Cuissart, B. Discovering Structural Alerts for Mutagenicity Using Stable Emerging Molecular Patterns. J. Chem. Inf. Model. 2015, 55, 925–940. [Google Scholar] [CrossRef]
- Li, G.; Law, R.; Vu, H.Q.; Rong, J.; Zhao, X.R. Identifying emerging hotel preferences using Emerging Pattern Mining technique. Tour. Manag. 2015, 46, 311–321. [Google Scholar] [CrossRef]
- Yu, X.; Li, M.; Kim, K.; Chung, J.; Ryu, K. Emerging pattern-based clustering of web users utilizing a simple page-linked graph. Sustainability 2016, 8, 239. [Google Scholar] [CrossRef]
- Weng, C.-H.; Huang, T. Observation of sales trends by mining emerging patterns in dynamic markets. Appl. Intell. 2018, 48, 4515–4529. [Google Scholar] [CrossRef]
- Abd-Ellatif, L.; Kamel, N.; Abd-Ellatif, M. Efficient Model for Mining Emerging Patterns in Financial Transitions. Int. J. Eng. Sci. 2023, 12, 13–23. [Google Scholar]
- García-Vico, Á.M.; González, P.; Carmona, C.J.; del Jesus, M.J. Study on the use of different quality measures within a multi-objective evolutionary algorithm approach for emerging pattern mining in big data environments. Big Data Anal. 2019, 4, 1–15. [Google Scholar] [CrossRef]
- García-Vico, Á.M.; González, P.; Carmona, C.J.; del Jesus, M.J. A Big Data Approach for the Extraction of Fuzzy Emerging Patterns. Cogn. Comput. 2019, 11, 400–417. [Google Scholar] [CrossRef]
- García-Vico, M.; Carmona, C.J.; González, P.; del Jesus, M.J. A distributed evolutionary fuzzy system-based method for the fusion of descriptive emerging patterns in data streams. Inf. Fusion 2023, 91, 412–423. [Google Scholar] [CrossRef]
- Neto, M.P.; Paulovich, F.V. Multivariate Data Explanation by Jumping Emerging Patterns Visualization. IEEE Trans. Vis. Comput. Graph. 2022, 1–16. [Google Scholar] [CrossRef]
- Rahardja, U.; Dewanto, I.J.; Djajadi, A.; Candra, A.P.; Hardini, M. Analysis of COVID 19 Data in Indonesia Using Supervised Emerging Patterns. APTISI Trans. Manag. (ATM) 2022, 6, 91–101. [Google Scholar] [CrossRef]
- Trasierras, A.M.; Luna, J.M.; Ventura, S. Improving the understanding of cancer in a descriptive way: An emerging pattern mining-based approach. Int. J. Intell. Syst. 2022, 37, 2822–2848. [Google Scholar] [CrossRef]
- Rios-Mendez, I.A.; Rodriguez-Mazahua, L.; Guzman, J.A.P.; Machorro-Cano, I.; Pelaez-Camarena, S.G.; Romero-Torres, C.; Muñoz-Contreras, H. Discovering Emerging Patterns from Medical Opinions about the Decrease of Autopsies Performed in a Mexican Hospital. In Proceedings of the IEEE International Conference on Automation Science and Engineering, Hong Kong, China, 20–24 August 2020; pp. 798–803. [Google Scholar]
- Wang, L.; Wang, Y.; Zhao, D. Building Emerging Pattern (EP) random forest for recognition. In Proceedings of the International Conference on Image Processing, ICIP, Hong Kong, China, 26–29 September 2010; pp. 1457–1460. [Google Scholar]
- García-Borroto, M.; Martínez-Trinidad, J.F.; Carrasco-Ochoa, J.A.; Medina-Pérez, M.A.; Ruiz-Shulcloper, J. LCMine: An efficient algorithm for mining discriminative regularities and its application in supervised classification. Pattern Recognit. 2010, 43, 3025–3034. [Google Scholar] [CrossRef]
- García-Borroto, M.; Martínez-Trinidad, J.F.; Carrasco-Ochoa, J.A. A New Emerging Pattern Mining Algorithm and Its Application in Supervised Classification. In Advances in Knowledge Discovery and Data Mining; Zaki, M.J., Yu, J.X., Ravindran, B., Pudi, V., Eds.; Springer: Berlin/Heidelberg, Germany, 2010; pp. 150–157. [Google Scholar]
- García-Vico, A.M.; Montes, J.; Aguilera, J.; Carmona, C.J.; del Jesus, M.J. Analysing concentrating photovoltaics technology through the use of emerging pattern mining. In Advances in Intelligent Systems and Computing; Graña, M., López-Guede, J., Etxaniz, O., Herrero, Á., Quintián, H., Corchado, E., Eds.; Springer: Cham, Switzerland, 2017; Volume 527, pp. 334–344. [Google Scholar]
- Liu, Q.; Shi, P.; Hu, Z.; Zhang, Y. A novel approach of mining strong jumping emerging patterns based on BSC-tree. Int. J. Syst. Sci. 2014, 45, 598–615. [Google Scholar] [CrossRef]
- Fan, H.; Ramamohanarao, K. Fast discovery and the generalization of strong jumping emerging patterns for building compact and accurate classifiers. IEEE Trans. Knowl. Data Eng. 2006, 18, 721–737. [Google Scholar] [CrossRef]
- Terlecki, P.; Walczak, K. Efficient discovery of top-K minimal jumping emerging patterns. In Lecture Notes in Computer Science; Chan, C.C., Grzymala-Busse, J.W., Ziarko, W.P., Eds.; Springer: Berlin/Heidelberg, Germany, 2008; pp. 438–447. [Google Scholar]
- Bailey, J.; Manoukian, T.; Ramamohanarao, K. Fast algorithms for mining emerging patterns. In Lecture Notes in Computer Science; Elomaa, T., Mannila, H., Toivonen, H., Eds.; Springer: Berlin/Heidelberg, Germany, 2002; pp. 39–50. [Google Scholar]
- Fan, H.; Ramamohanarao, K. Efficiently mining interesting emerging patterns. In Lecture Notes in Computer Science; Dong, G., Tang, C., Wang, W., Eds.; Springer: Berlin/Heidelberg, Germany, 2003; pp. 189–201. [Google Scholar]
- Li, J.; Dong, G.; Ramamohanarao, K.; Wong, L. Deeps: A new instance-based lazy discovery and classification system. Mach. Learn. 2004, 54, 99–124. [Google Scholar] [CrossRef]
- Fan, H.; Ramamohanarao, K. A Bayesian approach to use emerging patterns for classification. In Proceedings of the ADC ’03: Proceedings of the 14th Australasian Database Conference, Adelaide, Australia, 17 January 2003; pp. 39–48. [Google Scholar]
Name | Description |
---|---|
Area | The field of medicine |
Category | Corresponding class |
Ult_grade | Last degree of studies |
Gral_med_school | General Medical School |
Spec_school | Medical Specialties School |
Years_exp | Years of experience in medical practice |
Cases | Participation in the cases of autopsy |
Finding_disc | Autopsy findings discrepant with clinical diagnosis |
Finding_arb | Autopsy findings in arbitration cases |
Finding_claims | Autopsy findings arise from claims |
Reasons_aut | Reasons for accepting autopsies |
Reasons_not_aut | Reasons for not accepting autopsies |
Family_refusal | Reasons for family refusal of autopsy |
Underperforming_hosp | Reasons for underperforming hospital autopsies |
Appropriate_pers | Appropriate personnel for autopsy request |
Physician_request | Reasons for physician requesting an autopsy |
Efficient_req_met | Efficient autopsy request methods |
Algorithm | Speed (S) | Patterns with Confidence > 0.6 | Patterns |
---|---|---|---|
iEPMiner | 12 | 405 | 405 |
LCMine | 6.9 | 7 | 82 |
SJEP-C | 52.5 | 3752 | 4944 |
Top-k minimal SJEPs | 19.8 | 39 | 44 |
Tree-based JEP-C | 9.8 | 1060 | 1288 |
Algorithm | WRACC | CONF | GR | TPR | FPR | Patterns |
---|---|---|---|---|---|---|
iEPMiner | 0.4049 | 0.8830 | 1 | 0.0522 | 0.0048 | 405 |
LCMine | 0.4136 | 1 | 1 | 0.1046 | 0 | 7 |
SJEP-C | 0.2592 | 0.9647 | 1 | 0.0197 | 0.0005 | 3752 |
Top-k minimal SJEPs | 0.2791 | 0.9309 | 1 | 0.0438 | 0.0021 | 39 |
Tree-based JEP-C | 0.3037 | 0.9776 | 1 | 0.0074 | 0.0002 | 1060 |
EP | Interpretation |
---|---|
IF Finding_arb = 8d AND Gral_med_school = c1 THEN 17d | If the doctors disagree that autopsy findings could result in arbitration cases and their general medicine training center is c1, then they believe that the main reason for the family’s refusal to perform an autopsy is due to the autopsy being inadequately requested. |
IF Finding_arb = 8d AND Ult_grade = g2 THEN 17f | If the doctors disagree that autopsies can originate in arbitration cases and their last grade of studies is general medicine, then they believe that the main reason why the family refuses to allow an autopsy is due to deficient communication between the physician and the patient and his or her family. |
IF Cases = 4b AND Finding_claims = 11z THEN 17f | If physicians participated in fewer than five autopsies and it is unknown if they recognize that autopsies may originate in cases involving claims, then they conclude that the main reason for the family’s refusal to perform an autopsy is due to the deficient communication of the physician with the patient and family. |
Algorithm | Speed (S) | Patterns with Confidence > 0.6 | Patterns |
---|---|---|---|
iEPMiner | 3 | 63 | 63 |
LCMine | 6.4 | 14 | 61 |
SJEP-C | 64.3 | 6383 | 8383 |
Top-k Minimal SJEPs | 43.5 | 29 | 55 |
Tree-based JEP-C | 10.3 | 741 | 973 |
Algorithm | WRACC | CONF | GR | TPR | FPR | Patterns |
---|---|---|---|---|---|---|
iEPMiner | 0.3236 | 0.8425 | 1 | 0.1227 | 0.0039 | 63 |
LCMine | 0.2261 | 1 | 1 | 0.0089 | 0 | 14 |
SJEP-C | 0.1474 | 0.9524 | 1 | 0.0338 | 0.0004 | 6383 |
Top-k minimal SJEPs | 0.2461 | 0.8920 | 1 | 0.0703 | 0.0024 | 29 |
Tree-based JEP-C | 0.2144 | 0.9916 | 1 | 0.0115 | 0.0001 | 741 |
EP | Interpretation |
---|---|
IF Years_exp = 3a AND Cases = 4a AND Ult_grade = g2 THEN 18c | If the doctors have experience of fewer than five years, they were involved in zero autopsy cases, and their last grade obtained is general medicine, then they believe that one reason why the institution does not undertake enough autopsies is a deficiency in financial resources. |
IF Category = c2 AND Finding_claims = 11b AND Family_refusal = 17f THEN 18d | If the doctors answer the survey through an intern invitation, they acknowledge that autopsies may originate in cases involving claims, and they believe that the main cause of the family’s refusal to perform an autopsy is due to the deficient communication of the physician with the patient and family, then they believe that one reason why there are not enough autopsies carried out in hospitals is due to autopsies not being requested. |
Algorithm | Speed (S) | Patterns with Confidence > 0.6 | Patterns |
---|---|---|---|
iEPMiner | 185.5 | 1372 | 1372 |
LCMine | 8 | 29 | 174 |
SJEP-C | 135 | 6080 | 6168 |
Top-k minimal SJEPs | 29.6 | 15 | 33 |
Tree-based JEP-C | 30.7 | 6095 | 6252 |
Algorithm | WRACC | CONF | GR | TPR | FPR | Patterns |
---|---|---|---|---|---|---|
iEPMiner | 0.8039 | 0.9698 | 0.9781 | 0.0615 | 0.0148 | 1372 |
LCMine | 0.7254 | 0.9701 | 1 | 0.0203 | 0.0003 | 29 |
SJEP-C | 0.6385 | 0.9880 | 0.9899 | 0.0267 | 0.0020 | 6080 |
Top-k minimal SJEPs | 0.6258 | 0.9739 | 1 | 0.0821 | 0.0007 | 15 |
Tree-based JEP-C | 0.7894 | 0.9751 | 0.9529 | 0.0110 | 0.0048 | 6095 |
EP | Interpretation |
---|---|
IF Years_exp = 3d AND Cases = 4a AND Finding_disc = 7b THEN 19a | If the doctors have 16–20 years of practice, they have participated in 0 autopsy incidents, and they agree that an autopsy can cause discrepancies with the clinical diagnoses, then they consider that the appropriate personnel to properly ask for an autopsy is the physician. |
IF Years_exp = 3d AND Cases = 4c AND Finding_disc = 7b THEN 19e | If the doctors have 16–20 years of practice, they have participated in 6–10 autopsy incidents, and they agree that autopsy can cause discrepancies with the clinical diagnoses, then they consider that the suitable people to request an autopsy is family. |
Algorithm | Speed (S) | Patterns with Confidence > 0.6 | Patterns |
---|---|---|---|
iEPMiner | 5 | 153 | 153 |
LCMine | 6.3 | 5 | 133 |
SJEP-C | 59.4 | 3220 | 3410 |
Top-k minimal SJEPs | 52.2 | 26 | 44 |
Tree-based JEP-C | 10.8 | 780 | 987 |
Algorithm | WRACC | CONF | GR | TPR | FPR | Patterns |
---|---|---|---|---|---|---|
iEPMiner | 0.3410 | 0.8792 | 1 | 0.0570 | 0.0042 | 153 |
LCMine | 0.3989 | 1 | 1 | 0.0289 | 0 | 5 |
SJEP-C | 0.3179 | 0.9582 | 1 | 0.0225 | 0.0007 | 3220 |
Top-k minimal SJEPs | 0.3235 | 0.9479 | 1 | 0.0474 | 0.0028 | 26 |
Tree-based JEP-C | 0.3789 | 0.9916 | 1 | 0.0044 | 0.0001 | 780 |
EP | Interpretation |
---|---|
IF Years_exp = 3e AND Finding_arb = 8c AND Cases = 4e THEN 20a | If the doctors have more than 20 years of practice, they think that it is uncertain that an autopsy can initiate arbitration cases, and they have been involved in over 20 cases of autopsy, then interest is regarded as a potential factor that could motivate a physician to request an autopsy. |
IF Finding_arb = 8c AND Area = a3 AND Cases = 4e THEN 20a | If the doctors think that it is uncertain that an autopsy can originate in arbitration cases, they are assigned, and they have participated in at least 20 autopsies, then they believe that one cause for the physician to request an autopsy is interest. |
IF Years_exp = 3e AND Finding_arb = 8c AND Finding_disc = 7c THEN 20a | If the doctors have more than 20 years of practice, they think that it is uncertain that an autopsy can originate in arbitration cases, and they believe that it is uncertain that an autopsy can cause discrepancies with the clinical diagnoses, then they think that one reason for the doctor’s request for an autopsy is interest. |
IF Finding_arb = 8c AND Area = a3 AND Finding_disc = 7c THEN 20a | If the doctors think that it is uncertain that an autopsy can originate in arbitration cases, they are assigned, and they think that it is uncertain that an autopsy can cause discrepancies with the clinical diagnoses, then they consider that one cause for the physician to request an autopsy is interest. |
IF Finding_claims = 11a AND Spec_school = c7 THEN 20e | If the doctors agree that autopsies can originate in claim cases and their medical specialty training center is c7, then they believe that one cause of the doctor requesting an autopsy is a flawed diagnosis. |
Attribute | The Algorithm That Found More Patterns | Fastest Algorithm |
---|---|---|
Family_refusal | SJEP-C | LCMine |
Underperforming_hosp | SJEP-C | iEPMiner |
Appropriate_pers | Tree-based JEP-C | LCMine |
Physician_request | SJEP-C | iEPMiner |
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content. |
© 2023 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
Share and Cite
Machorro-Cano, I.; Ríos-Méndez, I.A.; Palet-Guzmán, J.A.; Rodríguez-Mazahua, N.; Rodríguez-Mazahua, L.; Alor-Hernández, G.; Olmedo-Aguirre, J.O. Medical Opinions Analysis about the Decrease of Autopsies Using Emerging Pattern Mining. Data 2024, 9, 2. https://doi.org/10.3390/data9010002
Machorro-Cano I, Ríos-Méndez IA, Palet-Guzmán JA, Rodríguez-Mazahua N, Rodríguez-Mazahua L, Alor-Hernández G, Olmedo-Aguirre JO. Medical Opinions Analysis about the Decrease of Autopsies Using Emerging Pattern Mining. Data. 2024; 9(1):2. https://doi.org/10.3390/data9010002
Chicago/Turabian StyleMachorro-Cano, Isaac, Ingrid Aylin Ríos-Méndez, José Antonio Palet-Guzmán, Nidia Rodríguez-Mazahua, Lisbeth Rodríguez-Mazahua, Giner Alor-Hernández, and José Oscar Olmedo-Aguirre. 2024. "Medical Opinions Analysis about the Decrease of Autopsies Using Emerging Pattern Mining" Data 9, no. 1: 2. https://doi.org/10.3390/data9010002
APA StyleMachorro-Cano, I., Ríos-Méndez, I. A., Palet-Guzmán, J. A., Rodríguez-Mazahua, N., Rodríguez-Mazahua, L., Alor-Hernández, G., & Olmedo-Aguirre, J. O. (2024). Medical Opinions Analysis about the Decrease of Autopsies Using Emerging Pattern Mining. Data, 9(1), 2. https://doi.org/10.3390/data9010002