Toward Enhanced Clinical Decision Support for Patients Undergoing a Hip or Knee Replacement: Focus Group and Interview Study With Surgeons

被引:0
作者
Grant, Sabrina [1 ]
Tonkin, Emma
Craddock, Ian [2 ]
Blom, Ashley [3 ]
Holmes, Michael [2 ]
Judge, Andrew [1 ]
Masullo, Alessandro [2 ]
Nieto, Miquel Perello [2 ]
Song, Hao [2 ]
Whitehouse, Michael [1 ]
Flach, Peter [4 ]
Gooberman-Hill, Rachael [1 ]
机构
[1] Univ Bristol, Southmead Hosp, Bristol Med Sch, Musculoskeletal Res Unit, Bristol, England
[2] Digital Hlth, Fac Engn, Bristol, England
[3] Univ Sheffield, Fac Med Dent & Hlth, Sheffield, England
[4] Univ Bristol, Dept Comp Sci, Intelligent Syst Lab, Bristol, England
基金
英国工程与自然科学研究理事会;
关键词
arthroplasty; knee replacement; hip replacement; orthopedic surgery; clinical decision-making; postoperative follow-up; home; PHYSICAL FUNCTION; HEALTH; SENSOR; RECOMMENDATIONS; OSTEOARTHRITIS; QUESTIONNAIRE; ARTHROPLASTY; PERCEPTIONS;
D O I
10.2196/36172
中图分类号
R61 [外科手术学];
学科分类号
摘要
Background: The current assessment of recovery after total hip or knee replacement is largely based on the measurement of health outcomes through self-report and clinical observations at follow-up appointments in clinical settings. Home activity-based monitoring may improve assessment of recovery by enabling the collection of more holistic information on a continuous basis. Objective: This study aimed to introduce orthopedic surgeons to time-series analyses of patient activity data generated from a platform of sensors deployed in the homes of patients who have undergone primary total hip or knee replacement and understand the potential role of these data in postoperative clinical decision-making. Methods: Orthopedic surgeons and registrars were recruited through a combination of convenience and snowball sampling. Inclusion criteria were a minimum required experience in total joint replacement surgery specific to the hip or knee or familiarity with postoperative recovery assessment. Exclusion criteria included a lack of specific experience in the field. Of the 9 approached participants, 6 (67%) orthopedic surgeons and 3 (33%) registrars took part in either 1 of 3 focus groups or 1 of 2 interviews. Data were collected using an action-based approach in which stimulus materials (mock data visualizations) provided imaginative and Results: Each data visualization was presented sequentially followed by a discussion of key illustrative commentary from participants, ending with a summary of key themes emerging across the focus group and interview data set. Conclusions: The limitations of the evidence are as follows. The data presented are from 1 English hospital. However, all data reflect the views of surgeons following standard national approaches and training. Although convenience sampling was used, participants' background, skills, and experience were considered heterogeneous. Passively collected home monitoring data offered a real opportunity to more objectively characterize patients' recovery from surgery. However, orthopedic surgeons highlighted the considerable difficulty in navigating large amounts of complex data within short medical consultations with patients. Orthopedic surgeons thought that a proposed dashboard presenting information and decision support alerts would fit best with existing clinical workflows. From this, the following guidelines for system design were developed: minimize the risk of misinterpreting data, and consider the impact of patient engagement with data in the future.
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页数:20
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