From Force Plates to AI: Establishing Validity and Reliability of a 2D AI-Camera System for Quantifying Sit-to-Stand Power Measurement

从测力台到人工智能:建立用于量化坐立功率测量的二维人工智能摄像头系统的有效性和可靠性

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Abstract

BACKGROUND: Muscle power is a critical determinant of functional capacity and overall health, particularly in aging and athletic populations. The 30-second Sit to Stand Power Test (30STSPT) offers a practical means of assessing lower limb power, yet its widespread clinical adoption is limited by the need for specialized equipment. Emerging technologies, such as 2D Artificial Intelligence (AI)-based camera systems, may offer scalable and accessible alternatives for power assessment. # PURPOSEThe purpose of this study was to determine (1) the concurrent validity against a dual force plate system and (2) the test-retest reliability of a 2D AI-camera for capturing and calculating the muscle power for a 30STSPT. It was hypothesized that the 2D AI-camera would have high test-retest reliability and strong concurrent validity with the power measured by a dual force plate system and inertial measurement unit (IMU). # STUDY DESIGNValidation and reliability study # METHODSA convenience sample of 24 healthy adults (20-55 years) completed two maximal-effort trials of the 30-second Sit-to-Stand Power Test (30STSPT). During each trial, repetitions were counted by research personnel, the AI-based camera system, and the criterion system (dual force plates synchronized with an inertial measurement unit [IMU]). The AI system automatically calculated trial-level mean power (W·kg(-1)) using body mass, stature, chair height, and performance time via a validated equation. The criterion method computed power from average peak vertical ground-reaction forces and IMU-derived vertical displacement. Concurrent validity between AI and criterion power was assessed using Pearson's correlation coefficient (r) with 95% confidence intervals (CI) and Bland-Altman analysis. Test-retest reliability for AI and criterion measures was evaluated using a two-way mixed-effects intraclass correlation coefficient (ICC(3,1)) with 95% CI, and measurement error was quantified via the standard error of measurement (SEM) and minimal detectable change at 95% confidence (MDC₉₅). RESULTS: A total of 24 individuals (M:F, 9:15) with a mean age of 34.4 ± 9.4 years and an average BMI of 24.9 ± 4.1 kg·m(-2) completed two trials of the 30STSPT. AI-derived power demonstrated excellent correlation with the criterion method for Trial 1 (r = 0.945, 95% CI 0.861-0.979) and Trial 2 (r = 0.934, 95% CI 0.833-0.975). Bland-Altman analysis showed a mean bias of +0.66 W·kg(-1) (LoA: -0.51 to +1.83) for Trial 1 and +0.53 W·kg(-1) (LoA: -1.07 to +2.12) for Trial 2, with proportional bias evident in both trials (Trial 1 slope = -0.195, p = 0.027; Trial 2 slope = -0.285, p = 0.0049). Test-retest reliability of AI-derived power was excellent (ICC(3,1) = 0.942, 95% CI 0.860-0.977), with SEM = 0.362 W·kg(-1) (7.13%) and MDC₉₅ = 1.004 W·kg(-1) (19.8%). Criterion reliability was good-to-excellent (ICC(3,1) = 0.916, 95% CI 0.790-0.968), with SEM = 0.489 W·kg(-1) (11.4%) and MDC₉₅ = 1.355 W·kg(-1) (31.6%). CONCLUSION: The findings of this study support the use of a 2D AI-camera system as a valid and highly reliable tool for quantifying muscle power during the 30-second Sit to Stand Power Test. The 2D AI-camera system offers a promising solution for scalable, objective performance testing in clinical and remote settings.

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