Wearable Sensors As a Preoperative Assessment Tool: A Review
Overview
Affiliations
Surgery is a common first-line treatment for many types of disease, including cancer. Mortality rates after general elective surgery have seen significant decreases whilst postoperative complications remain a frequent occurrence. Preoperative assessment tools are used to support patient risk stratification but do not always provide a precise and accessible assessment. Wearable sensors (WS) provide an accessible alternative that offers continuous monitoring in a non-clinical setting. They have shown consistent uptake across the perioperative period but there has been no review of WS as a preoperative assessment tool. This paper reviews the developments in WS research that have application to the preoperative period. Accelerometers were consistently employed as sensors in research and were frequently combined with photoplethysmography or electrocardiography sensors. Pre-processing methods were discussed and missing data was a common theme; this was dealt with in several ways, commonly by employing an extraction threshold or using imputation techniques. Research rarely processed raw data; commercial devices that employ internal proprietary algorithms with pre-calculated heart rate and step count were most commonly employed limiting further feature extraction. A range of machine learning models were used to predict outcomes including support vector machines, random forests and regression models. No individual model clearly outperformed others. Deep learning proved successful for predicting exercise testing outcomes but only within large sample-size studies. This review outlines the challenges of WS and provides recommendations for future research to develop WS as a viable preoperative assessment tool.
Multicenter Evaluation of Machine-Learning Continuous Pulse Rate Algorithm on Wrist-Worn Device.
Chen W, Cordero R, Lever Taylor J, Pangallo D, Picard R, Cruz M Digit Biomark. 2024; 8(1):218-228.
PMID: 39670276 PMC: 11637493. DOI: 10.1159/000542615.
Mobile Accelerometer Applications in Core Muscle Rehabilitation and Pre-Operative Assessment.
Prochazka A, Martynek D, Vitujova M, Janakova D, Charvatova H, Vysata O Sensors (Basel). 2024; 24(22).
PMID: 39599107 PMC: 11598069. DOI: 10.3390/s24227330.
[The potential of wearable technology in knee arthroplasty].
Smits Serena R, Cotic M, Hinterwimmer F, Valle C Orthopadie (Heidelb). 2024; 53(11):858-865.
PMID: 39340561 DOI: 10.1007/s00132-024-04567-7.
Wearable Devices in Colorectal Surgery: A Scoping Review.
Kavallieros K, Karakozis L, Hayward R, Giannas E, Selvaggi L, Kontovounisios C Cancers (Basel). 2024; 16(13).
PMID: 39001367 PMC: 11240327. DOI: 10.3390/cancers16132303.
Predicting Blood Glucose Levels with Organic Neuromorphic Micro-Networks.
Kurt I, Krauhausen I, Spolaor S, van de Burgt Y Adv Sci (Weinh). 2024; 11(27):e2308261.
PMID: 38682442 PMC: 11251550. DOI: 10.1002/advs.202308261.