A Decision Support Framework for Periprosthetic Joint Infection Treatment: A Cost-Effectiveness Analysis Using Two Modeling Approaches †
Abstract
:1. Introduction
1.1. Periprosthetic Joint Infection
1.2. PJI Treatment Methods
1.3. Cost-Effectiveness Analysis
1.4. Problem Statement
2. Related Works
3. Methods
3.1. Data
- Systemic inflammatory response syndrome, sepsis;
- Infectious inflammation of soft tissues of an unlimited form (phlegmon) or extensive purulent streaks to the neurovascular bundles;
- A soft tissue defect that does not allow the wound to be sutured;
- Implant-associated osteomyelitis IV (diffuse) anatomical type, patient’s physiological class C (Cierny-Mader classification);
- Recurrent course of PJI, when the number of reEP with implantation of an antibacterial spacer was equal of more than 3;
- Defects of the acetabulum not less than 3B and of the femur not less than 4 according to Paprosky classification, which were identified before surgery or formed as a result of surgical treatment.
3.2. Models
3.2.1. Decision Tree
- For each patient record:
- -
- Collect the sequence of operations performed;
- -
- Add the resulting outcome at the end of the sequence as a last patient state, based on death date (if available) and on the PJI status checked during the last observation. Patients who died with confirmed PJI are marked by the state ‘Death’. Those, who had PJI and were alive by the end of the study, are marked by the state ‘Failure’ (of treatment). Finally, those who did not have PJI have the state ‘Success’;
- -
- Assume that the first state of the decision tree (the root) coincides with the name of the applied treatment strategy, and the second, third, …, -th states are related to the first, second, …, n-th registered interventions taken from the patient records (). The -th state is related to the treatment outcome assigned at the previous step of the algorithm.
- Starting from :
- -
- Gather the list of all recorded intervention types which correspond to the intervention in the patient records;
- -
- Calculate the ratios of occurrence for each operation type ;
- -
- For each :
- *
- Gather the list of all recorded intervention types which correspond to the intervention in the patient records which had intervention equal to ;
- *
- Calculate the ratios of occurrence for each operation type ;
- *
- For each :
- *
- …
- *
- If , break.
3.2.2. Markov Model
- It can become intractable if the number of different states and transitions in the patient records is too big;
- It does not consider the time passed between the transitions from state to state.
- To create the model states, the classification described in Table 3, Section 3.1 is used. In addition to the PJI-related interventions (PJI or PJI relapse) and the interventions not related to PJI, a separate intervention type is introduced, which is a second stage intervention for two-stage treatment methods (‘Endoprosthesis installation + spacer removal’);
- The resulting model states are: (a) PJI (waiting for the treatment), (b) second stage (no PJI, waiting for the spacer removal in two-stage treatment methods), (c) additional surgeries (waiting for the treatment of a non-PJI issue), (d) observation (no PJI), and (e) death. The situations of a first PJI case and a recurrent PJI are not distinguished due to the lack of corresponding data in the records;
- The time in the model is discrete, with the time step equal to one month;
- The simulation starts with the state ‘PJI’. The state ‘death’ is an absorbing state.
- Form a subset of records of patients who were treated using a fixed treatment strategy;
- For each patient, form a list of his subsequent states with the step size of one month, starting from the first manifestation date (i.e., when he was first observed at the hospital with PJI) till the present moment or until he dies. The manifestation dates and intervention dates are used in this process. If the states were changed several times during one month, the last state is taken as the current one at the end of the regarded month;
- Calculate the overall number of transitions between the model states;
- Estimate the transition probabilities via dividing the number of transitions of particular type by the total number of transitions.
3.3. Model Uncertainty
- Draw a random subsample from the patient records database;
- Use the selected subsample to obtain possible model states and calculate the transitional probabilities between them;
- Repeat the procedure n times using different subsamples each time;
- Based on obtained samples of size n, calculate the confidence interval for each transitional probability using the formula:
3.4. Cost-Effectiveness Analysis
3.4.1. Decision Trees
3.4.2. Markov Models
- The cost of a month of inpatient stay awaiting surgery related to PJI (state of the model);
- Cost of the PJI operation (the transition of the model from “Waiting for surgery with PJI” to “Waiting for the second stage of therapy with PJI”);
- Cost of three months of waiting for the second stage of therapy (state of the model);
- Cost of the operation of the second stage of therapy with PJI (transition of the model from “Waiting for the second stage of therapy with PJI” to “Observation”);
- The cost of a month in the “Observation” state.
4. Results
5. Discussion
- Total/average treatment impact related to the increase in quality of life for the patient (in QALY units) and the operational costs for the healthcare unit (in rubles);
- Proportions between the costs in rubles and the utility gained for one average patient or a group of patients (costs of one QALY unit, or costs per QALY).
- The approach connected with the decision trees makes it possible to trace the sequence of operations in high detail, thus making it easier to accurately calculate average QALY and costs per model state, since one state is easily interpreted as an actual medical procedure. At the same time, detailed states make it harder to use the model for prediction purposes. The limited sample sizes for particular treatment methods dramatically increase the uncertainty in transition probabilities assessment and the nomenclature of possible states themselves. Lastly, since the model is event-based and does not include time, it is not suitable for dynamic time-explicit prediction of the health outcomes. Only the ultimate result for the patient might be established (PJI-related death or death from other causes).
- In comparison with decision trees, the Markov model is better suitable for handling treatment processes based on small patient samples due to its generalized states. Additionally, it is more suitable for prediction of individual patient trajectories. Since the Markov model includes time, it allows to monitor time-related costs and expenses. The drawbacks of the model include complications in calculating QALY and costs per state. The generalized states have somewhat abstract interpretation and, therefore, some form of averaging is inevitable in calculating (Formula (2)), which increases the calculation uncertainty.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A. Model Schemes with Transition Probabilities
References
- Boelch, S.P.; Jakuscheit, A.; Doerries, S.; Fraissler, L.; Hoberg, M.; Arnholdt, J.; Rudert, M. Periprosthetic infection is the major indication for TKA revision–experiences from a university referral arthroplasty center. BMC Musculoskelet. Disord. 2018, 19, 1–6. [Google Scholar] [CrossRef] [PubMed]
- Meyer, J.A.; Zhu, M.; Cavadino, A.; Coleman, B.; Munro, J.T.; Young, S.W. Infection and periprosthetic fracture are the leading causes of failure after aseptic revision total knee arthroplasty. Arch. Orthop. Trauma Surg. 2021, 141, 1373–1383. [Google Scholar] [CrossRef] [PubMed]
- Masters, E.A.; Trombetta, R.P.; de Mesy Bentley, K.L.; Boyce, B.F.; Gill, A.L.; Gill, S.R.; Muthukrishnan, G. Evolving concepts in bone infection: Redefining “bio-film”, “acute vs. chronic osteomyelitis”, “the immune proteome” and “local antibiotic therapy”. Bone Res. 2019, 7, 1–18. [Google Scholar] [CrossRef] [PubMed]
- Haddad, F.S.; Ngu, A.; Negus, J.J. Prosthetic joint infections and cost analysis? In A Modern Approach to Biofilm-Related Orthopaedic Implant Infections; Springer: Berlin/Heidelberg, Germany, 2017; Volume 971, pp. 93–100. [Google Scholar]
- Vanhegan, I.S.; Malik, A.K.; Jayakumar, P.; Ul Islam, S.; Haddad, F.S. A financial analysis of revision hip arthroplasty: The economic burden in relation to the national tariff. J. Bone Joint Surg. Br. 2012, 94, 619–623. [Google Scholar] [CrossRef]
- Bozic, K.J.; Ries, M.D. The impact of infection after total hip arthroplasty on hospital and surgeon resource utilization. J. Bone Joint Surg. 2005, 87, 1746–1751. [Google Scholar]
- Parvizi, J.; Zmistowski, B.; Berbari, E.F.; Bauer, T.W.; Springer, B.D.; Della Valle, C.J.; Garvin, K.L.; Mont, M.A.; Wongworawat, M.D.; Zalavras, C.G. New definition for periprosthetic joint infection: From the workgroup of the Musculoskeletal Infection Society. Clin. Orthop. Relat. Res. 2011, 469, 2992–2994. [Google Scholar] [CrossRef]
- Shanmugasundaram, S.; Ricciardi, B.F.; Briggs, T.W.; Sussmann, P.S.; Bostrom, M.P. Evaluation and management of periprosthetic joint Infection–an international, multicenter study. HSS J. 2014, 10, 36–44. [Google Scholar] [CrossRef] [PubMed]
- Ibrahim, M.S.; Twaij, H.; Haddad, F.S. Two-stage revision for the culture-negative infected total hip arthroplasty: A comparative study. Bone Jt. J. 2018, 100, 3–8. [Google Scholar] [CrossRef]
- Kuo, F.C.; Goswami, K.; Shohat, N.; Blevins, K.; Rondon, A.J.; Parvizi, J. Two-stage exchange arthroplasty is a favorable treatment option upon diagnosis of a fungal periprosthetic joint infection. J. Arthroplast. 2018, 33, 3555–3560. [Google Scholar] [CrossRef]
- Goel, R.; Buckley, P.; Sterbis, E.; Parvizi, J. Patients with Infected Total Hip Arthroplasty Undergoing 2-Stage Exchange Arthroplasty Experience Massive Blood Loss. J. Arthroplast. 2018, 33, 3547–3550. [Google Scholar] [CrossRef] [PubMed]
- Zahar, A.; Klaber, I.; Gerken, A.M.; Gehrke, T.; Gebauer, M.; Lausmann, C.; Citak, M. Ten-year results following one-stage septic hip exchange in the management of periprosthetic joint infection. J. Arthroplast. 2019, 34, 1221–1226. [Google Scholar] [CrossRef]
- Klouche, S.; Sariali, E.; Mamoudy, P. Total hip arthroplasty revision due to infection: A cost analysis approach. Orthop. Traumatol. Surg. Res. 2010, 96, 124–132. [Google Scholar] [CrossRef]
- Toulson, C.; Walcott-Sapp, S.; Hur, J.; Salvati, E.; Bostrom, M.; Brause, B.; Westrich, G.H. Treatment of infected total hip arthroplasty with a 2-stage reimplantation protocol: Update on “our institution’s” experience from 1989 to 2003. J. Arthroplast. 2009, 24, 1051–1060. [Google Scholar] [CrossRef] [PubMed]
- Ji, B.; Xu, B.; Guo, W.; Rehei, A.; Mu, W.; Yang, D.; Cao, L. Retention of the well-fixed implant in the single-stage exchange for chronic infected total hip arthroplasty: An average of five years of follow-up. Int. Orthop. 2017, 41, 901–909. [Google Scholar] [CrossRef]
- El-Husseiny, M.; Haddad, F.S. The role of highly selective implant retention in the infected hip arthroplasty. Clin. Orthop. Relat. Res. 2016, 474, 2157–2163. [Google Scholar] [CrossRef] [PubMed]
- Fukui, K.; Kaneuji, A.; Ueda, S.; Matsumoto, T. Should well-fixed uncemented femoral components be revised in infected hip arthroplasty? Rep. Five Trial Cases. J. Orthop. 2016, 13, 437–442. [Google Scholar]
- Crowe, J.F.; Sculco, T.P.; Kahn, B. Revision total hip arthroplasty: Hospital cost and reimbursement analysis. Clin. Orthop. Relat. Res. 2003, 413, 175–182. [Google Scholar] [CrossRef]
- Kurtz, S.M.; Lau, E.; Watson, H.; Schmier, J.K.; Parvizi, J. Economic burden of periprosthetic joint infection in the united states. J. Arthroplast. 2012, 27, 61–65. [Google Scholar] [CrossRef]
- Peel, T.N.; Dowsey, M.M.; Buising, K.L.; Liew, D.; Choong, P.F.M. Cost analysis of debridement and retention for management of prosthetic joint infection. Clin. Microbiol. Infect. 2013, 19, 181–186. [Google Scholar] [CrossRef]
- Guyatt, G.; Cairns, J.; Churchill, D.; Cook, D.; Haynes, B.; Hirsh, J.; Irvine, J.; Levine, M.; Levine, M.; Nishikawa, J.; et al. Evidence-based medicine: A new approach to teaching the practice of medicine. JAMA 1992, 268, 2420–2425. [Google Scholar] [CrossRef] [PubMed]
- Hernández-Vaquero, D.; Fernández-Fairen, M.; Torres, A.; Menzie, A.M.; Fernández-Carreira, J.M.; Murcia-Mazon, A.; Guerado, E.; Merzthal, L. Treatment of periprosthetic infections: An economic analysis. Sci. World J. 2013, 2013, 821650. [Google Scholar] [CrossRef] [PubMed]
- Li, C.; Renz, N.; Trampuz, A. Management of Periprosthetic Joint Infection. Hip Pelvis 2018, 30, 138–146. [Google Scholar] [CrossRef] [PubMed]
- Kovalchuk, S.V.; Funkner, A.A.; Metsker, O.G.; Yakovlev, A.N. Simulation of patient flow in multiple healthcare units using process and data mining techniques for model identification. J. Biomed. Inform. 2018, 82, 128–142. [Google Scholar] [CrossRef]
- Kovalchuk, S.V.; Knyazkov, K.V.; Syomov, I.I.; Yakovlev, A.N.; Boukhanovsky, A.V. Personalized clinical decision support with complex hospital-level modelling. Procedia Comput. Sci. 2015, 66, 392–401. [Google Scholar] [CrossRef]
- Parisi, T.J.; Konopka, J.F.; Bedair, H.S. What is the Long-term Economic Societal Effect of Periprosthetic Infections After THA? A Markov Analysis. Clin. Orthop. Relat. Res. 2017, 475, 1891–1900. [Google Scholar] [CrossRef] [PubMed]
- Alp, E.; Cevahir, F.; Ersoy, S.; Guney, A. Incidence and economic burden of prosthetic joint infections in a university hospital: A report from a middle-income country. J. Infect. Public Health 2016, 9, 494–498. [Google Scholar] [CrossRef]
- Somerson, J.S.; Boylan, M.R.; Hug, K.T.; Naziri, Q.; Paulino, C.B.; Huang, J.I. Risk factors associated with periprosthetic joint infection after total elbow arthroplasty. Shoulder Elb. 2019, 11, 116–120. [Google Scholar] [CrossRef]
- Srivastava, K.; Bozic, K.J.; Silverton, C.; Nelson, A.J.; Makhni, E.C.; Davis, J.J. Reconsidering strategies for managing chronic periprosthetic joint infection in total knee arthroplasty: Using decision analytics to find the optimal strategy between one-stage and two-stage total knee revision. JBJS 2019, 101, 14–24. [Google Scholar] [CrossRef]
- Kaliberda, Y.E.; Leonenko, V.N.; Artyukh, V.A. Towards cost-effective treatment of periprosthetic joint infection: From statistical analysis to Markov models. In Proceedings of the International Conference on Computational Science, Krakow, Poland, 16–18 June 2021; pp. 494–505. [Google Scholar]
- Leonenko, V.N.; Kaliberda, Y.E.; Artyuk, V.A. A Modeling Framework for Decision Support in Periprosthetic Joint Infection Treatment. Stud. Health Technol. Inform. 2021, 285, 106–111. [Google Scholar]
- Dolan, P. Modeling valuations for EuroQol health states. Med. Care 1997, 35, 1095–1108. [Google Scholar] [CrossRef] [PubMed]
- Bates, S.; Leonenko, V.; Rineer, J.; Bobashev, G. Using synthetic populations to understand geospatial patterns in opioid related overdose and predicted opioid misuse. Comput. Math. Organ. Theory 2019, 25, 36–47. [Google Scholar] [CrossRef]
- Leonenko, V.N. Analyzing the spatial distribution of acute coronary syndrome cases using synthesized data on arterial hypertension prevalence. In Proceedings of the International Conference on Computational Science, Amsterdam, The Netherlands, 3–5 June 2020; Springer: Cham, Switzerland, 2020; pp. 483–494. [Google Scholar]
Treatment | Age/Sex | <20 | 21–30 | 31–40 | 41–50 | 51–60 | 61–70 | 71–80 | 81–90 | >90 | Total |
---|---|---|---|---|---|---|---|---|---|---|---|
2-stage > 2 mth | M | 3 | 20 | 33 | 59 | 50 | 26 | 5 | 196 | ||
F | 1 | 2 | 17 | 17 | 46 | 46 | 36 | 6 | 171 | ||
1-stage retro | M | 1 | 1 | ||||||||
F | 1 | 1 | 2 | ||||||||
2-stage 2–3 wk | M | 2 | 4 | 1 | 3 | 1 | 11 | ||||
F | 1 | 1 | 1 | 3 | |||||||
2-stage 6–8 wk | M | 8 | 8 | 9 | 6 | 1 | 32 | ||||
F | 2 | 5 | 10 | 2 | 19 | ||||||
1-stage | M | 1 | 4 | 4 | 11 | 9 | 3 | 1 | 33 | ||
F | 1 | 6 | 14 | 13 | 11 | 45 | |||||
RA | M | 1 | 2 | 4 | 1 | 8 | |||||
F | 1 | 2 | 2 | 5 | |||||||
re-THR-PE | M | 1 | 4 | 2 | 5 | 3 | 3 | 2 | 20 | ||
F | 1 | 3 | 10 | 9 | 8 | 31 | |||||
Partial-I | M | ||||||||||
F | 1 | 1 | 3 | 2 | 1 | 3 | 11 | ||||
Partial-II | M | 2 | 3 | 2 | 7 | ||||||
F | 1 | 2 | 2 | 5 | |||||||
Total | 1 | 6 | 57 | 82 | 151 | 163 | 105 | 34 | 1 | 600 |
Abbreviation | Full Name | Description |
---|---|---|
re-THR-PE | Revision operation with the preservation of endoprosthesis | The joint is opened and washed. The parts of the artificial joint, which can be easily removed, are replaced with the new ones, and the wound is closed. |
2-stage re-THR | Two-stage total hip replacement with > 2 months (2–3 weeks, 6–8 weeks) between the stages | The joint is opened and cleaned up, an antibacterial spacer is placed, and the wound is closed. After a certain time period, the joint is opened again, the spacer is removed, the prosthesis is installed and the joint is closed. |
RA | Resection arthroplasty | The joint is opened, everything is removed, the hole in the tissues is filled with a muscle cut from the thigh, and the wound is closed. |
1-stage | One-stage total hip replacement | The joint is opened, everything is removed, a new endoprosthesis is installed and the wound is closed. |
Partial-I | Partial one-stage total hip replacement | Equal to one-stage re-THR, but with partial preservation of the endoprosthesis. |
Partial-II | Partial two-stage total hip replacement | Equal to two-stage re-THR, but with partial preservation of the endoprosthesis. |
No PJI | First Case of PJI or PJI Relapse | PJI Relapse |
---|---|---|
Endoprosthesis (EP) installation + spacer removal; | Debridement + spacer installation; | Debridement + spacer reinstallation; |
EP installation (no spacer); | Debridement; | Disarticulation; |
Non-infectious: spacer dislocation; | EP components replacement + debridement; | Spacer removal + support osteotomy; |
Other: (suturing, etc.); | Debridement + full EP replacement; | Debridement + support osteotomy + muscle plastic; |
Non-infectious: periprosthetic fracture case; | Joint drainage + long-term suppressive antibiotic therapy (ABT); | Joint drainage |
re-THR-PE | 2-Stage > 2 Months | RA | |
---|---|---|---|
QALY | 2.08 | 4.19 | 6.30 |
Cost, rubles | 142,367 | 239,770 | 90,220 |
Costs per QALY, rubles | 68,411.22 | 57,200.29 | 14,323.45 |
Rank of effectiveness | 3 | 2 | 1 |
re-THR-PE | 2-Stage > 2 Months | RA | |
---|---|---|---|
QALY | 1.88 | 1.92 | 1.79 |
Cost, rubles | 117,634 | 243,670 | 105,920 |
Costs per QALY, rubles | 62,571.27 | 126,911.46 | 59,173.18 |
Rank of effectiveness | 2 | 3 | 1 |
2-Stage 2–3 wk | 2-Stage 6–8 wk | 1-Stage | Partial-I | Partial-II | |
---|---|---|---|---|---|
QALY | 8.16 | 8.89 | 3.21 | 4.59 | 8.6 |
Cost, rubles | 314,771 | 289,315 | 144,815 | 158,484 | 264,606 |
Costs per QALY, rubles | 38,596.55 | 32,562.1 | 45,095.1 | 34,546.21 | 30,766.29 |
Rank of effectiveness | 4 | 2 | 5 | 3 | 1 |
Treatment Method | 2-Stage 2–3 wk | 2-Stage 6–8 wk | 1-Stage | Partial-I | Partial-II |
---|---|---|---|---|---|
QALY | 1.925 | 2.055 | 1.99 | 1.83 | 2.0 |
Cost, rubles | 288,507 | 300,471 | 147,687 | 135,370 | 267,436 |
Costs per QALY, rubles | 149,874.77 | 146,214.6 | 74,214.57 | 73,972.68 | 133,718 |
Rank of effectiveness | 5 | 4 | 2 | 1 | 3 |
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Leonenko, V.N.; Kaliberda, Y.E.; Muravyova, Y.V.; Artyukh, V.A. A Decision Support Framework for Periprosthetic Joint Infection Treatment: A Cost-Effectiveness Analysis Using Two Modeling Approaches. J. Pers. Med. 2022, 12, 1216. https://doi.org/10.3390/jpm12081216
Leonenko VN, Kaliberda YE, Muravyova YV, Artyukh VA. A Decision Support Framework for Periprosthetic Joint Infection Treatment: A Cost-Effectiveness Analysis Using Two Modeling Approaches. Journal of Personalized Medicine. 2022; 12(8):1216. https://doi.org/10.3390/jpm12081216
Chicago/Turabian StyleLeonenko, Vasiliy N., Yulia E. Kaliberda, Yulia V. Muravyova, and Vasiliy A. Artyukh. 2022. "A Decision Support Framework for Periprosthetic Joint Infection Treatment: A Cost-Effectiveness Analysis Using Two Modeling Approaches" Journal of Personalized Medicine 12, no. 8: 1216. https://doi.org/10.3390/jpm12081216
APA StyleLeonenko, V. N., Kaliberda, Y. E., Muravyova, Y. V., & Artyukh, V. A. (2022). A Decision Support Framework for Periprosthetic Joint Infection Treatment: A Cost-Effectiveness Analysis Using Two Modeling Approaches. Journal of Personalized Medicine, 12(8), 1216. https://doi.org/10.3390/jpm12081216