Technologies for the Instrumental Evaluation of Physical Function in Persons Affected by Chronic Obstructive Pulmonary Disease: A Systematic Review
Abstract
:1. Introduction
2. Methods
2.1. Eligibility Criteria and Information Sources
2.2. Search Strategy
2.3. Selection Process
2.4. Data Items and Presentation of Results
2.5. Risk of Bias Assessment
3. Results
3.1. Study Characteristics
3.2. Application Studies
3.3. Validation Studies
3.4. Risk of Bias (Validation Studies)
4. Discussion
4.1. Same Metrics and Different Technologies
4.2. The Instrumental Evaluation of the 6 min Walking Test
4.3. Which Technology to Implement?
4.4. Current Limitations to Technology Implementation
5. Conclusions
6. Future Directions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Study’s First Author | Year | Country | Study Design | Study Population | Subjects, n (% of Females) | Age, Mean (SD) | FEV1 % of Predicted, Mean (SD) |
---|---|---|---|---|---|---|---|
Application studies | |||||||
Annegarn [19] | 2012 | the Netherlands | Cross-sectional | Mixed: - COPD: outpatients recruited during a pre-rehabilitation assessment - Healthy subjects from previous trials conducted in the same centre | 79 (40) 24 (37) | 64 (9) 64 (6) | 53.5 (18.7) |
Beauchamp [11] | 2012 | Canada | Cross-sectional | Mixed: - COPD: outpatients - Healthy age–sex-matched controls | 37 (54) 20 (60) | 71 (7) 67 (9) | 39.4 (16.3) |
Canuto [12] | 2010 | Brazil | Cross-sectional | - COPD: outpatients | 14 (NA) | 69 (5) | 39.4 (9.3) |
Dos Reis [20] | 2020 | Brazil | Cross-sectional | Mixed: - COPD: outpatients - Healthy subjects | 30 (33) 34 (32) | 68 (8) 67 (8) | 42.1 (16.4) |
Fallahtafti [21] | 2020 | USA | Cross-sectional | Mixed: - COPD: outpatients - Healthy subjects from general population | 17 (53) 23 (78) | 64 (8) 60 (7) | NA |
Gloeckl [22] | 2017 | Germany | Randomized Clinical Trial | COPD: Inpatients with COPD, GOLD stage III and IV | 74 (32) | 64 (9) | 35.1 (10.1) |
Iwakura [23] | 2019 | Japan | Cross-sectional | Mixed: - COPD: outpatients - Healthy subjects: age-matched, from local community centre | 34 (0) 16 (0) | 71 (8) 72 (6) | 57.0 (28.0) |
Janssens [24] | 2014 | Belgium | Cross-sectional | Mixed: - COPD: outpatients - Healthy subjects | 18 (33) 18 (33) | 65 (7) 64 (7) | 51.0 (19.0) |
Liu [25] | 2019 | the Netherlands | Cross-sectional | COPD: outpatients referred for pulmonary rehabilitation | 44 (43) | 62 (8) | 55.9 (19.7) |
Liu [10] | 2020 | USA | Cross-sectional | Mixed: - COPD: outpatients - healthy subjects | 22 (41) 22 (73) | 63 (9) 62 (9) | 53.7 (18.5) |
Liu [26] | 2017 | the Netherlands | Cross-sectional | Mixed: - COPD: outpatients referred for a pulmonary rehabilitation program in a specialized rehabilitation center - Healthy subjects from previous trials conducted in the same center | 80 (40) 38 (37) | 62 (7) 62 (6) | 55.8 (19.4) |
Marquis [27] | 2009 | Canada | Cross-sectional | Mixed: - COPD: outpatients - Healthy sedentary subjects | 10 (10) 11 (9) | 63 (6) 67 (6) | 37.0 (13.0) |
McCamley [28] | 2017 | USA | Cross-sectional | Mixed: - COPD: outpatients from the pulmonary clinical studies unit of university - Healthy elderly - Patients with bilateral peripheral artery disease | 16 (NA) 25 (NA) 25 (NA) | 64 (9) 66 (7) 64 (8) | NA |
Meijer [29] | 2014 | the Netherlands | Cross-sectional | Mixed: - COPD: outpatients - healthy subjects | 21 (24) 24 (29) | 64 (8) 62 (6) | 50.1 (20.1) |
Morlino [30] | 2017 | Italy | Cross-sectional | Mixed: - COPD: outpatients - Healthy subjects | 40 (28) 28 (43) | 71 (7) 70 (7) | 50.2 (21.1) |
Munari [31] | 2020 | Brazil | Cross-sectional | - COPD: outpatients | 36 (19) | 67 (7) | 51.1 (13.6) |
Rutkowski [32] | 2014 | Poland | Cross-sectional | Mixed: - COPD: inpatients - Healthy individuals | 33 (15) 48 (73) | 66 (10) 59 (12) | NA |
Terui [33] | 2018 | Japan | Cross-sectional | Mixed: - COPD: outpatients, who previously underwent pulmonary rehabilitation - Healthy individuals | 16 (0) 26 (42) | 71 (9) 68 (7) | 58.4 (20.1) |
Vaes [34] | 2012 | the Netherlands | Randomized crossover study | - COPD: outpatients, recruited during pre-rehabilitation assessment | 21 (48) | 64 (10) | 42.0 (15.0) |
Yentes [35] | 2015 | USA | Cross-sectional | Mixed - COPD outpatients recruited from local hospitals - Healthy subjects | 17 (35) 21 (52) | 64 (9) 65 (8) | 50.2 (21.0) |
Yentes [36] | 2017 | USA | Cross-sectional | Mixed - COPD individuals recruited from outpatients clinics - Healthy subjects | 20 (20) 20 (55) | 64 (10) 63 (8) | 54.3 (19.2) |
Validation studies | |||||||
Cheng [37] | 2013 | USA | Validation study | Mixed: - COPD: outpatients - Healthy subjects | 6(83) 6(50) | NA | NA |
Iwakura [23] | 2019 | Japan | Test-retest reliability | - COPD: outpatients | 20 (0) | 71 (8) | 57.0 (28.0) |
Liu [38] | 2016 | The Netherlands | Cross-sectional | Mixed: - COPD: outpatients (pre-rehabilitation assessment) - Healthy subjects | 61 (38) 48 (53) | 62 (7) 62 (6) | 57.6 (20.0) |
Sant’Anna [39] | 2012 | Brazil | Cross-sectional | - COPD: outpatients recently or currently enrolled in respiratory physiotherapy | 30 (43) | 67 (7) | 44.0 (17.0) |
Study’s First Author | Device | Protocol for Technology Application | Functional Test/Function | Parameter(s) | Values for COPD Participants, Mean (SD) * |
---|---|---|---|---|---|
Annegarn [19] | Accelerometer (Minimod, McRoberts, The Hague, The Netherlands), 100 Hz sampling frequency. | Accelerometer was attached to the trunk at the level of the sacrum. | 6MWT | Walking intensity, counts·min−1 Cadence, strides·min−1 Anterior–Posterior AC, % Vertical AC, % Medio-Lateral AC, % | 8658 (2971) 57 (6) 79.0 (10.7) 84.2 (10.2) 63.2 (14.0) |
Canuto [12] | sEMG (analogical signals were amplified with 1000 gain. The signal was filtered with 10–500 Hz band-pass filter). | Electrodes positioned on the motor point of the rectus femoris, vastus lateralis, tibialis anterioris, and soleus during STS and 6MWT. | 6MWT and STS | Muscle fatigue ACF during STS: Initial, degrees Final, degrees Muscle fatigue ACF during 6MWT: Initial, degrees Final, degrees | −11.6 (4.6) −18.3 (5.3) −11.9 (4.5) 14.5 (3.3) |
Dos Reis [20] | sEMG (Myomonitor IV, DelSys, Boston, Massachusetts) at 2000 Hz. NIRS (OXYMON MK III, Artinis Medical System, Elst, The Netherlands) at 250 Hz. | Four muscle groups were assessed with EMG: sternocleidomastoid, Intercostal muscles, anterior deltoid, and trapezius. EMG signal was obtained for 6 min while the subject was performing the 6PBRT. NIRS was placed on intercostal muscles and anterior deltoid muscles. | 6PBRT | Root mean square, mV: intercostal muscles sternocleidomastoid trapezius anterior deltoid Mean Frequency, Hz: intercostal muscles sternocleidomastoid trapezius anterior deltoid Oxyhemoglobin, Δ(O2Hb): intercostal muscles anterior deltoid deoxyhemoglobin, Δ(HHb): intercostal muscles anterior deltoid total hemoglobin, Δ(tHb): intercostal muscles anterior deltoid | Ranges 0.0046; 0.0051 0.0029; 0.0044 0.0543; 0.0587 0.073; 0.0844 54.85; 57.27 84.48; 88.08 73.17; 75.67 67.68; 73.03 −0.266; 0.357 −6.306; −2.58 −0.189; 0.169 6.757; 9.73 −0.494; 0.262 0.938; 7.051 |
Iwakura [23] | A tri-axial accelerometer system (Mimamori-gait system, LSI Medience Corporation, Japan) | The accelerometer was fixed to a belt around the level of the subject’s third lumbar vertebra. | Ten-meter walk test (14 m) | Gait speed, m·s−1 Step length, m Cadence, step·min−1 Walk ratio, mm·(steps·min−1)−1 Acceleration, g Step time SD, s | 1.09 (0.22) 0.60 (0.08) 109 (10) 5.53 (0.69) 0.23 (0.08) 0.03 (0.01) |
Marquis [27] | sEMG signals with a wireless amplifier system (TeleMyo2400T; Noraxon, Inc., Scottsdale, AZ), high pass filtered (10 Hz) and pre-amplified near electrodes. Band-pass filter 10–500 Hz and amplification at the receiver box. | sEMG signals from the soleus, tibialis anterior, medial gastrocnemius, vastus lateralis, and rectus femoris muscles of the right lower limb were measured during the 6 MWT. | 6MWT (30-m long course according to the procedures recommended by ATS). | Median frequency, Hz: Soleus Tibialis anterior Gastrocnemius Vastus lateralis Rectus femoris Integrated EMG, µV: Soleus Tibialis anterior Gastrocnemius Vastus lateralis Rectus femoris | (Derived from figures) 85; 110 80; 90 85; 90 55; 70 50; 61 20,000; 25,000 30,000; 40,000 20,000; 25,000 12,000; 20,000 4000; 5000 |
Meijer [29] | Two tri-axial accelerometers (CIRO Activity Monitor (CAM); Maastricht Instruments B.V., Maastricht) and a Programmable Ambulant Signal AcQuisition system (PASAQ; Maastricht Instruments B.V.) for sEMG | A common ground electrode was placed on the ulnar styloid process. The cables from the electrodes were taped to the skin and placed into the PASAQ, which the participant wore in a small backpack. | Twelve domestic activities of daily life (cleaning windows, writing on a board, cleaning sink, pouring water and drinking, stretching arms, shaking hands, drawing picture, folding towels, putting towel on top shelf, walking, face care, and sweeping the floor). | Arm intensity, AU Arm elevation, AU Leg intensity, AU Relative muscle effort (trapezius), AU Relative muscle effort (biceps brachii), AU Relative muscle effort (deltoid), AU | Ranges 5.5; 70 −9.8; 19.1 1.6; 40.6 7.7; 52.1 3.1; 26.1 2.7; 35.7 |
Munari [31] | PortaMon NIRS device (Artinis Medical Systems). | NIRS was positioned on the vastus lateralis muscle of the dominant lower limb approximately 10 cm from the knee. | 6-min step test (6MST): 20 -cm high step. Two trials performed with an interval of 30 min. Test was stopped once HR > 85% predicted max HR or SpO2 < 85% and resumed once the conditions for safe trial were met again. | Δ (difference between minute 6 –start): Oxyhemoglobin (O2Hb) Deoxyhemoglobin (HHb) Total hemoglobin (THb) Tissue saturation index (TSI), % | −5.40 (6.11) 7.73 (6.54) 2.33 (6.93) −7.34 (5.30) |
Terui [33] | Wireless tri-axial accelerometer (MG-M1110; LSI Medience, Tokyo, Japan) | The accelerometer was fixed to a belt at the level of the subject’s L3. | 10 m walk (1-m spare walkway area at the start and the end). | Difference in the absolute value for lateral acceleration. Difference between vertical acceleration when the right leg is in the stance phase and vertical acceleration when the left leg is in the stance phase. Lissajou index, % | 0.22 (0.15) 0.15 (0.11) 34.2 (19.2) |
Vaes [34] | Two tri-axial accelerometers (KXP94, Kionix Inc., Ithaca New York, USA) and the signal acquisition system for ambulant measurements (PASAQ, Maastricht Instruments B.V., Maastricht, The Netherlands) | Accelerometers were placed two fingers above the lateral malleolus of the right ankle and on the lower back and were connected with the PASAQ. Patients were randomly assigned to walk with rollator or modern draisine during the 6MWT. | 6MWT (with rollator or modern draisine) | Strides, n: Modern draisine Rollator Stride length, m: Modern draisine Rollator Stride frequency, stides·s−1: Modern draisine Rollator RMS of the acceleration: Modern draisine Rollator | 245.3 (60.9) 300.3 (49.1) 1.27 (0.14) 1.89 (0.73) 0.76 (0.14) 0.88 (0.11) 0.10 (0.03) 0.19 (0.07) |
Study’s First Author | Device | Protocol for Technology Application | Functional Test/Function | Parameter(s) | Values for COPD Participants, Mean (SD) * |
---|---|---|---|---|---|
Beauchamp [11] | Force plates (Advanced Medical Technology Inc.): two plates in parallel + one (in front of the subject. sEMG (gastrocnemius, tibialis anterior): pre-amplified signal at 500 gain + amplification by 1000. Signal digitally filtered from 20–250 Hz with 2nd-order dual pass Butterworth. | Force plates were used to capture footfall during perturbation-evoked reactions. sEMG was recorded bilaterally. | Perturbation-Evoked Reactions: subjects wore a harness with a cable attached posteriorly and were instructed to lean forward. Five perturbation trials were completed. | Foot-off time, ms Foot contact time, ms Swing time, ms APA duration, ms Integrated APA size, mm·ms | 372 (78) 500 (89) 128 (28) 192 (52) 339 (253) |
Fallahtafti [21] | Gait analysis (12-camera Raptor system, Motion Analysis Corp., Santa Rosa, CA, USA), using anteroposterior trajectory of retro-reflective marker attached to the right heel. | Retro-reflective spherical markers were attached bilaterally to lateral and medial metatarsophalangeal joint, base of the second toe, calcaneus, heel, lateral and medial malleoli, midshank, tibial tuberosity, lateral and medial knee joint centre, top of thigh, midthigh, greater trochanter, anterior and posterior superior iliac spine, and sacrum. Marker trajectories were analyzed for the last four minutes of each trial. | 6MWT on a treadmill at self-selected walking speed (SSWS) + 1 slow and 1 fast (−20% and +20% SSWS) walking trials. | Step width, m: SSWS SSWS −20% SSWS +20% Step time, s: SSWS SSWS −20% SSWS +20% Step length, m: SSWS SSWS −20% SSWS +20% | 0.09 (0.03) 0.09 (0.03) 0.02 (0.03) 0.84 (0.17) 0.71 (0.14) 0.69 (0.12) 0.42 (0.11) 0.45 (0.13) 0.52 (0.13) |
Gloeckl [22] | Force platform (Leonardo Mechanograph®, Novotec Medical, Pforzheim, Germany) with 8 force sensors (800 Hz) | Postural balance and muscular power were assessed using the ground reaction force platform. The best test was used for analysis. | Postural balance (Romberg, semitandem, one foot beside and behind the other, and one-leg stance). Muscle power (two-legged jump). | Romberg APL (eyes closed), mm Semi-tandem APL (eyes closed), mm Semi-tandem APL (eyes open), mm One-leg stance APL (eyes open), mm Two-legged jump, W∙kg−1 Two-legged jump height, cm | 429.50 (251.68) 885.50 (419.22) 365.50 (170.40) 839 (319.63) 24.30 (6.64) 23 (8.35) |
Janssens [24] | Six-channel force plate (Bertec, OH, USA), sampled at 500 Hz, filtered using low-pass filter (5 Hz) | Participants sit barefoot on a stool on the force plate. The vision of the participants was occluded. Participants were asked to perform five STS movements. | 5-STS | Sit duration, s Sit-to-stand duration, s Stand duration, s Stand-to-sit duration, s | 0.87 (0.36) 0.14 (0.08) 1.79 (0.78) 1.08 (0.88) |
Liu [25] | Three-dimensional motion analysis system with a dual-belt, instrumented treadmill and a virtual reality 180-degree projection screen (GRAIL, Motekforce Link, Amsterdam, the Netherlands) with integrated force plates (Forcelink, 12 channels, sample frequency 1000 Hz). | Patients performed a GRAIL-based 6MWTs on a split-belt, instrumented treadmill within a virtual reality environment. | 6MWT, on treadmill | Mean stride time, s: Pre-PR Post- PR Mean stride length, m: Pre-PR Post- PR Mean step width, m: Pre-PR Post- PR Sample entropy stride length: Pre-PR Post- PR Sample entropy step width: Pre-PR Post- PR LDE CoMvel-ML: Pre-PR Post- PR LDE CoMvel-V: Pre-PR Post- PR LDE CoMvel-AP: Pre-PR Post- PR | 1.02 (0.08) 1.00 (0.08) 1.45 (0.19) 1.48 (0.18) 0.18 (0.05) 0.18 (0.05) 1.17 (0.17) 1.21 (0.17) 1.43 (0.04) 1.43 (0.05) 2.83 (0.17) 2.77 (0.19) 2.78 (0.14) 2.79 (0.14) 2.75 (0.15) 2.70 (0.15) |
Liu [10] | High-speed motion capture system (Motion Analysis, Santa Rosa, California) at 60 Hz | Retroreflective markers were placed on bony landmarks of the body, bilaterally. Participants were asked to walk on a treadmill at their SSWS. Three-dimensional marker data were used to calculate sagittal joint angle time series for the ankle, knee, and hip. The range of motion (RoM) was calculated for every right and left step from the joint angle time series | A total of 3.5 min at self-selected walking speed (SSWS), 1 trial at speeds 20% slow, and 1 trial at speed 20% fast—on treadmill. | Mean RoM, degrees: Ankle SSWS −20% SSWS SSWS +20% Knee SSWS −20% SSWS SSWS +20% Hip SSWS −20% SSWS SSWS +20% Sample entropy RoM: Ankle SSWS −20% SSWS SSWS +20% Knee SSWS −20% SSWS SSWS +20% Hip SSWS −20% SSWS SSWS +20% Local divergence exponent joint angle: Ankle SSWS −20% SSWS SSWS +20% Knee SSWS −20% SSWS SSWS +20% Hip SSWS −20% SSWS SSWS +20% | 26.2 (5.9) 26.5 (6.0) 27.7 (6.0) 57.1 (8.8) 57.6 (8.7) 59.1 (7.2) 35.5 (5.6) 36.5 (5.1) 37.9 (4.9) 1.53 (0.38) 1.46 (0.40) 1.57 (0.51) 1.70 (0.42) 1.62 (0.39) 1.58 (0.36) 1.72 (0.23) 1.66 (0.23) 1.64 (0.29) 1.14 (0.11) 1.12 (0.17) 1.11 (0.15) 1.46 (0.14) 1.39 (0.16) 1.40 (0.17) 1.73 (0.18) 1.66 (0.18) 1.66 (0.19) |
Liu [26] | Three-dimensional motion analysis system with a dual-belt, instrumented treadmill and a virtual reality 180-degree projection screen (GRAIL, Motekforce Link, Amsterdam, the Netherlands) with integrated force plates (Forcelink, 12 channels, sample frequency 1000 Hz). | Twenty five reflective markers were placed on anatomical landmarks of each participant. Each participant performed two 6MWT’s using the GRAIL. | 6MWT, on treadmill | Cadence, steps·min−1 Double support time, s Stride time, s Stride length, m Step width, m | 118.6 (10.3) 0.28 (0.04) 1.02 (0.09) 1.43 (0.18) 0.18 (0.04) |
McCamley [28] | Three-dimensional marker trajectories (Motion Analysis Corp, Santa Rosa, CA; 60 Hz) and ground reaction forces (600 Hz; Kistler Group, Winterhur, Switzerland). | Thirty-three retro-reflective markers on specific anatomical locations. | Ten m walk: subjects walked over a 10 m path at their self-selected speed. | Peak angles, degrees Peak forces, N·kg−1 Peak moments, N·m·kg−1 Peak power, J·kg−1 Impulse, N·s·kg−1 | Ranges 4.2 (4.6); 36.5 (6.8) 0.03 (0.02); 1.09 (0.09) −0.75 (0.28); 1.41 (0.15) −0.90 (0.35); 2.49 (0.50) −0.40 (0.16); 0.40 (0.16) |
Morlino [30] | Instrumented mattress (GAITRite®, CIR Systems, USA) | Participants walked at comfortable speed along a 4 m-long instrumented mattress, four trials were evaluated. | 4-m walk | Speed, cm·s−1 Cadence, step·min−1 Step length, cm Duration of the single-support, % Gait Cycle duration Duration of the double-support, % Gait Cycle duration | Derived from figures 100 110 57 38 25 |
Rutkowski [32] | Instrumented mattress (GAITRite®, CIR Systems, USA). | From the 5th meter, there was a four-meter GaitRite mat placed in the corridor. Analysis included 3 measurements taken at 3 points during the test duration. | 6MWT: 30-m (evaluation on 4 m GaitRite) | Pace of gait, m·s−1 Stride length, cm Stride duration, s | 156.6 (18.8) 74.8 (6.8) 0.48 (0.04) |
Yentes [35] | High-speed motion capture system (Motion Analysis Corp., Santa Rosa, CA; 60 Hz) and piezoelectric force plate (Kistler Instrument Corp., Winterthur, Switzerland). | Reflective markers were placed on defined anatomical locations, bilaterally. | Ten m walk at normal pace. The subjects were asked to walk at normal pace (rest condition) or immediately after reporting breathlessness or muscle tiredness (provoked by treadmill walking with 10% incline) (no rest condition). | Speed, m·s−1: Rest No rest Step length, m: Rest No rest Step width, m: Rest No rest Step time, s: Rest No rest Stance time, s: Rest No rest Support time, s: Rest No rest Stride length, m: Rest No rest Stride time, s: Rest No rest | 1.11 (0.17) 1.15 (0.18) 0.66 (0.06) 0.66 (0.06) 0.11 (0.04) 0.12 (0.04) 0.58 (0.06) 0.59 (0.06) 0.69 (0.09) 0.70 (0.10) 0.11 (0.03) 0.12 (0.04) 1.31 (0.13) 1.33 (0.13) 1.15 (0.11) 1.18 (0.13) |
Yentes [36] | Infrared cameras (60 Hz; Motion Analysis Corp., Santa Rosa, CA) | A total of 3.5 min of walking on the treadmill at their self-selected pace and at two additional speeds (±20%). | Normal, fast, and slow walking (on treadmill) | Step length, m SSWS −20% SSWS SSWS +20% Step time, s SSWS −20% SSWS SSWS +20% Step width, m SSWS −20% SSWS SSWS +20% | 0.449 (0.11) 0.479 (0.13) 0.543 (0.13) 0.790 (0.16) 0.670 (0.12) 0.646 (0.12) 0.094 (0.04) 0.097 (0.04) 0.096 (0.04) |
Device | Parameters | Study’s First Author |
---|---|---|
Accelerometers | Cadence (steps/min) | Annegarn [19], Iwakura [23] |
Cadence (strides/min) | Annegarn [19], Vaes [34] | |
Autocorrelation coefficient AP | Annegarn [19] | |
Autocorrelation coefficient V | Annegarn [19] | |
Autocorrelation coefficient ML | Annegarn [19] | |
Gait speed | Iwakura [23] | |
Step length | Iwakura [23] | |
Step length/cadence (walk ratio) | Iwakura [23] | |
Acceleration magnitude | Iwakura [23], Vaes [34] | |
Step time | Iwakura [23] | |
Intensity (upper limbs) | Meijer [29] | |
Intensity (lower limbs) | Meijer [29] | |
Relative muscle effort | Meijer [29] | |
Difference in absolute ML acceleration | Terui [33] | |
Difference between V acceleration in right stance and left stance | Terui [33] | |
Lissajou index (symmetry evaluation) | Terui [33] | |
Total amount of strides | Vaes [34] | |
Stride length | Vaes [34] | |
Force plates | Foot-off time | Beauchamp [11] |
Foot contact time | Beauchamp [11] | |
Swing time (foot-off time—foot contact time) | Beauchamp [11] | |
APA | Beauchamp [11] | |
Integrated APA size | Beauchamp [11] | |
Absolute path length | Gloeckl [22] | |
Peak W/kg during jump | Gloeckl [22] | |
Jump height | Gloeckl [22] | |
Sit duration in STS | Janssens [24] | |
Sit-to-stand duration in STS | Janssens [24] | |
Stand duration in STS | Janssens [24] | |
Stand-to-sit duration in STS | Janssens [24] | |
Instrumented mattress | Speed | Morlino [30], Rutkowski [32] |
Step length | Morlino [30], Rutkowski [32] | |
Cadence | Morlino [30] | |
Single support duration | Morlino [30] | |
Double support duration | Morlino [30] | |
Stride duration | Morlino [30] | |
sEMG | Angular coefficient of medium frequency | Canuto [12] |
Mean frequency | Dos Reis [20] | |
RMS frequency | Dos Reis [20] | |
Median frequency | Marquis [27] | |
Integrated frequency | Marquis [27] | |
NIRS | Δ (O2Hb) | Dos Reis [27], Munari [31] |
Δ (HHb) | Dos Reis [27], Munari [31] | |
Δ (tHb) | Dos Reis [27], Munari [31] | |
Gait analysis/camera | Step width | Fallahtafti [21], Liu [25], Liu [26], Yentes [35], Yentes [36] |
Step duration | Fallahtafti [21] | |
Step length | Fallahtafti [21], Yentes [35], Yentes [36] | |
Stride time | Liu [25], Liu [26], Yentes [35] | |
Stride length | Liu [25], Liu [26], Yentes [35], Yentes [36] | |
Step time | Yentes [35] | |
Stance time | Yentes [35] | |
Stride sample entropy width | Liu [25] | |
Stride sample entropy length | Liu [25] | |
ROM | Liu [10] | |
Sample entropy ROM | Liu [10] | |
Local divergence exponent joint angle | Liu [10] | |
Cadence (steps/min) | Liu [26] | |
Double support time | Liu [26], Yentes [35] | |
Speed | Yentes [35] | |
Peak angles | McCamley [28] | |
Peak forces | McCamley [28] | |
Peak moments | McCamley [28] | |
Peak power | McCamley [28] | |
Impulse | McCamley [28] |
Study First Author | Year | Device | Test/Biomech fx | Parameter(s) | Comparison Device | Comparison Metric(s) | Comparison Value | Quality of the Study |
---|---|---|---|---|---|---|---|---|
Cheng [37] | 2013 | Phone app running on a Samsung Galaxy Ace | 6MWT | Walking speed (estimated by SVM) | Clinical measurement | Root mean square error | Range 0.032; 0.133 (different SVM models) | Inadequate |
Iwakura [23] | 2019 | A tri-axial accelerometer system (Mimamori-gait system, LSI Medience Corporation, Japan), 100 Hz sampling rate. | Tenm walk tst | Gait speed Step length Cadence Walk ratio Acceleration magnitude Step time | No | Intra-class correlation coef.: Gait speed (m·s−1) Step length (m) Cadence (step·min−1) Walk ratio Acceleration magnitude Step time SD | ICCs (95%CI) 0.97 (0.93–0.99) 0.97 (0.92–0.99) 0.96 (0.90–0.98) 0.97 (0.92–0.99) 0.97 (0.92–0.99) 0.91 (0.79–0.96) | Doubtful |
Liu [38] | 2016 | Three-dimensional motion analysis system with a dual-belt, instrumented treadmill and a virtual reality 180-degree projection screen (GRAIL, Motekforce Link, Amsterdam, the Netherlands) with integrated force plates (Forcelink, 12 channels, sample frequency 1000 Hz). | 6MWT | Walking speed | Clinical evaluation (overground 6MWT) | Intra-class correlation coefficient | ICCs (95%CI) 0.74 (0.51–0.86) | Doubtful |
Sant’Anna [39] | 2012 | Power Walker 610 (Yamax, 1-5-7, Chuo-cho, Meguro-ku, Tokyo 152-8691 Japan): pedometer combined with accelerometer. | Walking protocol | Number of steps (n) Walking distance (m) Intensity (m/min) Energy expenditure (Kcal) | Video recording and SenseWear Armband (for energy expenditure estimation) | Pearson correlation coefficient: Number of steps -fast -slow Walking distance -fast -slow Walking intensity (speed) -fast -slow Energy expenditure -fast -slow | rho 0.95 0.79 0.48 0.63 0.47 0.61 0.83 0.65 | Doubtful |
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Zucchelli, A.; Pancera, S.; Bianchi, L.N.C.; Marengoni, A.; Lopomo, N.F. Technologies for the Instrumental Evaluation of Physical Function in Persons Affected by Chronic Obstructive Pulmonary Disease: A Systematic Review. Sensors 2022, 22, 6620. https://doi.org/10.3390/s22176620
Zucchelli A, Pancera S, Bianchi LNC, Marengoni A, Lopomo NF. Technologies for the Instrumental Evaluation of Physical Function in Persons Affected by Chronic Obstructive Pulmonary Disease: A Systematic Review. Sensors. 2022; 22(17):6620. https://doi.org/10.3390/s22176620
Chicago/Turabian StyleZucchelli, Alberto, Simone Pancera, Luca Nicola Cesare Bianchi, Alessandra Marengoni, and Nicola Francesco Lopomo. 2022. "Technologies for the Instrumental Evaluation of Physical Function in Persons Affected by Chronic Obstructive Pulmonary Disease: A Systematic Review" Sensors 22, no. 17: 6620. https://doi.org/10.3390/s22176620
APA StyleZucchelli, A., Pancera, S., Bianchi, L. N. C., Marengoni, A., & Lopomo, N. F. (2022). Technologies for the Instrumental Evaluation of Physical Function in Persons Affected by Chronic Obstructive Pulmonary Disease: A Systematic Review. Sensors, 22(17), 6620. https://doi.org/10.3390/s22176620