Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors

Total knee arthroplasty (TKA) is a commonly implemented elective surgical treatment for end-stage osteoarthritis of the knee, demonstrating high success rates when assessed by objective medical outcomes. However, a considerable proportion of TKA patients report significant dissatisfaction postoperat...

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Main Authors: Ditton, Elizabeth, Johnson, Sarah, Hodyl, Nicolette, Flynn, Traci, Pollack, Michael, Ribbons, Karen, Walker, Frederick Rohan, Nilsson, Michael
Other Authors: Lee Kong Chian School of Medicine (LKCMedicine)
Format: Article
Language:English
Published: 2020
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Online Access:https://hdl.handle.net/10356/145643
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Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-145643
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Science::Medicine
Knee
Arthroplasty
spellingShingle Science::Medicine
Knee
Arthroplasty
Ditton, Elizabeth
Johnson, Sarah
Hodyl, Nicolette
Flynn, Traci
Pollack, Michael
Ribbons, Karen
Walker, Frederick Rohan
Nilsson, Michael
Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
description Total knee arthroplasty (TKA) is a commonly implemented elective surgical treatment for end-stage osteoarthritis of the knee, demonstrating high success rates when assessed by objective medical outcomes. However, a considerable proportion of TKA patients report significant dissatisfaction postoperatively, related to enduring pain, functional limitations, and diminished quality of life. In this conceptual analysis, we highlight the importance of assessing patient-centered outcomes routinely in clinical practice, as these measures provide important information regarding whether surgery and postoperative rehabilitation interventions have effectively remediated patients’ real-world “quality of life” experiences. We propose a novel precision medicine approach to improving patient-centered TKA outcomes through the development of a multivariate machine-learning model. The primary aim of this model is to predict individual postoperative recovery trajectories. Uniquely, this model will be developed using an interdisciplinary methodology involving non-linear analysis of the unique contributions of a range of preoperative risk and resilience factors to patient-centered TKA outcomes. Of particular importance to the model’s predictive power is the inclusion of a comprehensive assessment of modifiable psychological risk and resilience factors that have demonstrated relationships with TKA and other conditions in some studies. Despite the potential for patient psychological factors to limit recovery, they are typically not routinely assessed preoperatively in this patient group, and thus can be overlooked in rehabilitative referral and intervention decision-making. This represents a research-to-practice gap that may contribute to adverse patient-centered outcomes. Incorporating psychological risk and resilience factors into a multivariate prediction model could improve the detection of patients at risk of sub-optimal outcomes following TKA. This could provide surgeons and rehabilitation providers with a simplified tool to inform postoperative referral and intervention decision-making related to a range of interdisciplinary domains outside their usual purview. The proposed approach could facilitate the development and provision of more targeted rehabilitative interventions on the basis of identified individual needs. The roles of several modifiable psychological risk and resilience factors in recovery are summarized, and intervention options are briefly presented. While focusing on rehabilitation following TKA, we advocate for the broader utilization of multivariate prediction models to inform individually tailored interventions targeting a range of health conditions.
author2 Lee Kong Chian School of Medicine (LKCMedicine)
author_facet Lee Kong Chian School of Medicine (LKCMedicine)
Ditton, Elizabeth
Johnson, Sarah
Hodyl, Nicolette
Flynn, Traci
Pollack, Michael
Ribbons, Karen
Walker, Frederick Rohan
Nilsson, Michael
format Article
author Ditton, Elizabeth
Johnson, Sarah
Hodyl, Nicolette
Flynn, Traci
Pollack, Michael
Ribbons, Karen
Walker, Frederick Rohan
Nilsson, Michael
author_sort Ditton, Elizabeth
title Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
title_short Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
title_full Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
title_fullStr Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
title_full_unstemmed Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
title_sort improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors
publishDate 2020
url https://hdl.handle.net/10356/145643
_version_ 1759857907870990336
spelling sg-ntu-dr.10356-1456432023-03-05T16:48:20Z Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors Ditton, Elizabeth Johnson, Sarah Hodyl, Nicolette Flynn, Traci Pollack, Michael Ribbons, Karen Walker, Frederick Rohan Nilsson, Michael Lee Kong Chian School of Medicine (LKCMedicine) Science::Medicine Knee Arthroplasty Total knee arthroplasty (TKA) is a commonly implemented elective surgical treatment for end-stage osteoarthritis of the knee, demonstrating high success rates when assessed by objective medical outcomes. However, a considerable proportion of TKA patients report significant dissatisfaction postoperatively, related to enduring pain, functional limitations, and diminished quality of life. In this conceptual analysis, we highlight the importance of assessing patient-centered outcomes routinely in clinical practice, as these measures provide important information regarding whether surgery and postoperative rehabilitation interventions have effectively remediated patients’ real-world “quality of life” experiences. We propose a novel precision medicine approach to improving patient-centered TKA outcomes through the development of a multivariate machine-learning model. The primary aim of this model is to predict individual postoperative recovery trajectories. Uniquely, this model will be developed using an interdisciplinary methodology involving non-linear analysis of the unique contributions of a range of preoperative risk and resilience factors to patient-centered TKA outcomes. Of particular importance to the model’s predictive power is the inclusion of a comprehensive assessment of modifiable psychological risk and resilience factors that have demonstrated relationships with TKA and other conditions in some studies. Despite the potential for patient psychological factors to limit recovery, they are typically not routinely assessed preoperatively in this patient group, and thus can be overlooked in rehabilitative referral and intervention decision-making. This represents a research-to-practice gap that may contribute to adverse patient-centered outcomes. Incorporating psychological risk and resilience factors into a multivariate prediction model could improve the detection of patients at risk of sub-optimal outcomes following TKA. This could provide surgeons and rehabilitation providers with a simplified tool to inform postoperative referral and intervention decision-making related to a range of interdisciplinary domains outside their usual purview. The proposed approach could facilitate the development and provision of more targeted rehabilitative interventions on the basis of identified individual needs. The roles of several modifiable psychological risk and resilience factors in recovery are summarized, and intervention options are briefly presented. While focusing on rehabilitation following TKA, we advocate for the broader utilization of multivariate prediction models to inform individually tailored interventions targeting a range of health conditions. Published version 2020-12-30T08:33:34Z 2020-12-30T08:33:34Z 2020 Journal Article Ditton, E., Johnson, S., Hodyl, N., Flynn, T., Pollack, M., Ribbons, K., . . . Nilsson, M. (2020). Improving patient outcomes following total knee arthroplasty : identifying rehabilitation pathways based on modifiable psychological risk and resilience factors. Frontiers in Psychology, 11, 1061-. doi:10.3389/fpsyg.2020.01061 1664-1078 https://hdl.handle.net/10356/145643 10.3389/fpsyg.2020.01061 32670136 11 en Frontiers in Psychology © 2020 Ditton, Johnson, Hodyl, Flynn, Pollack, Ribbons, Walker and Nilsson. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. application/pdf