OBJECTIVE: The longitudinal assessment of physical function with high temporal resolution at a scalable and objective level in patients recovering from surgery is highly desirable to understand the biological and clinical factors that drive the clinical outcome. However, physical recovery from surgery itself remains poorly defined and the utility of wearable technologies to study recovery after surgery has not been established. BACKGROUND: Prolonged postoperative recovery is often associated with long-lasting impairment of physical, mental, and social functions. While phenotypical and clinical patient characteristics account for some variation of individual recovery trajectories, biological differences likely play a major role. Specifically, patient-specific immune states have been linked to prolonged physical impairment after surgery. However, current methods of quantifying physical recovery lack patient specificity and objectivity. METHODS: Here, a combined high-fidelity accelerometry and state-of-the-art deep immune profiling approach was studied in patients undergoing major joint replacement surgery. The aim was to determine whether objective physical parameters derived from accelerometry data can accurately track patient-specific physical recovery profiles (suggestive of a 'clock of postoperative recovery'), compare the performance of derived parameters with benchmark metrics including step count, and link individual recovery profiles with patients' preoperative immune state. RESULTS: The results of our models indicate that patient-specific temporal patterns of physical function can be derived with a precision superior to benchmark metrics. Notably, six distinct domains of physical function and sleep are identified to represent the objective temporal patterns: "activity capacity" and "moderate and overall activity" (declined immediately after surgery); "sleep disruption and sedentary activity" (increased after surgery); "overall sleep", "sleep onset", and "light activity" (no clear changes were observed after surgery). These patterns can be linked to individual patients' preoperative immune state using cross-validated canonical-correlation analysis. Importantly, the pSTAT3 signal activity in M-MDSCs predicted a slower recovery. CONCLUSIONS: Accelerometry-based recovery trajectories are scalable and objective outcomes to study patient-specific factors that drive physical recovery.
OBJECTIVE: The longitudinal assessment of physical function with high temporal resolution at a scalable and objective level in patients recovering from surgery is highly desirable to understand the biological and clinical factors that drive the clinical outcome. However, physical recovery from surgery itself remains poorly defined and the utility of wearable technologies to study recovery after surgery has not been established. BACKGROUND: Prolonged postoperative recovery is often associated with long-lasting impairment of physical, mental, and social functions. While phenotypical and clinical patient characteristics account for some variation of individual recovery trajectories, biological differences likely play a major role. Specifically, patient-specific immune states have been linked to prolonged physical impairment after surgery. However, current methods of quantifying physical recovery lack patient specificity and objectivity. METHODS: Here, a combined high-fidelity accelerometry and state-of-the-art deep immune profiling approach was studied in patients undergoing major joint replacement surgery. The aim was to determine whether objective physical parameters derived from accelerometry data can accurately track patient-specific physical recovery profiles (suggestive of a 'clock of postoperative recovery'), compare the performance of derived parameters with benchmark metrics including step count, and link individual recovery profiles with patients' preoperative immune state. RESULTS: The results of our models indicate that patient-specific temporal patterns of physical function can be derived with a precision superior to benchmark metrics. Notably, six distinct domains of physical function and sleep are identified to represent the objective temporal patterns: "activity capacity" and "moderate and overall activity" (declined immediately after surgery); "sleep disruption and sedentary activity" (increased after surgery); "overall sleep", "sleep onset", and "light activity" (no clear changes were observed after surgery). These patterns can be linked to individual patients' preoperative immune state using cross-validated canonical-correlation analysis. Importantly, the pSTAT3 signal activity in M-MDSCs predicted a slower recovery. CONCLUSIONS: Accelerometry-based recovery trajectories are scalable and objective outcomes to study patient-specific factors that drive physical recovery.
Authors: Brice Gaudillière; Gabriela K Fragiadakis; Robert V Bruggner; Monica Nicolau; Rachel Finck; Martha Tingle; Julian Silva; Edward A Ganio; Christine G Yeh; William J Maloney; James I Huddleston; Stuart B Goodman; Mark M Davis; Sean C Bendall; Wendy J Fantl; Martin S Angst; Garry P Nolan Journal: Sci Transl Med Date: 2014-09-24 Impact factor: 17.956
Authors: Gabriela K Fragiadakis; Brice Gaudillière; Edward A Ganio; Nima Aghaeepour; Martha Tingle; Garry P Nolan; Martin S Angst Journal: Anesthesiology Date: 2015-12 Impact factor: 7.892
Authors: Hiral Master; Jacquelyn S Pennings; Rogelio A Coronado; Abigail L Henry; Michael T O'Brien; Christine M Haug; Richard L Skolasky; Lee H Riley; Brian J Neuman; Joseph S Cheng; Oran S Aaronson; Clinton J Devin; Stephen T Wegener; Kristin R Archer Journal: Spine (Phila Pa 1976) Date: 2020-12-01 Impact factor: 3.468
Authors: Edward A Ganio; Natalie Stanley; Viktoria Lindberg-Larsen; Nima Aghaeepour; Martin S Angst; Brice Gaudilliere; Jakob Einhaus; Amy S Tsai; Franck Verdonk; Anthony Culos; Sajjad Ghaemi; Kristen K Rumer; Ina A Stelzer; Dyani Gaudilliere; Eileen Tsai; Ramin Fallahzadeh; Benjamin Choisy; Henrik Kehlet Journal: Nat Commun Date: 2020-07-27 Impact factor: 14.919
Authors: Kristen K Rumer; Julien Hedou; Amy Tsai; Jakob Einhaus; Franck Verdonk; Natalie Stanley; Benjamin Choisy; Edward Ganio; Adam Bonham; Danielle Jacobsen; Beata Warrington; Xiaoxiao Gao; Martha Tingle; Tiffany N McAllister; Ramin Fallahzadeh; Dorien Feyaerts; Ina Stelzer; Dyani Gaudilliere; Kazuo Ando; Andrew Shelton; Arden Morris; Electron Kebebew; Nima Aghaeepour; Cindy Kin; Martin S Angst; Brice Gaudilliere Journal: Ann Surg Date: 2022-03-01 Impact factor: 12.969