TY - JOUR
T1 - Quantization of extraoral free flap monitoring for venous congestion with deep learning integrated iOS applications on smartphones
T2 - a diagnostic study
AU - Hsu, Shao Yun
AU - Chen, Li Wei
AU - Huang, Ren Wen
AU - Tsai, Tzong Yueh
AU - Hung, Shao Yu
AU - Cheong, David Chon Fok
AU - Lu, Johnny Chuieng Yi
AU - Chang, Tommy Nai Jen
AU - Huang, Jung Ju
AU - Tsao, Chung Kan
AU - Lin, Chih Hung
AU - Chuang, David Chwei Chin
AU - Wei, Fu Chan
AU - Kao, Huang Kai
N1 - Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc.
PY - 2023/6/1
Y1 - 2023/6/1
N2 - BACKGROUND: Free flap monitoring is essential for postmicrosurgical management and outcomes but traditionally relies on human observers; the process is subjective and qualitative and imposes a heavy burden on staffing. To scientifically monitor and quantify the condition of free flaps in a clinical scenario, we developed and validated a successful clinical transitional deep learning (DL) model integrated application.MATERIAL AND METHODS: Patients from a single microsurgical intensive care unit between 1 April 2021 and 31 March 2022, were retrospectively analyzed for DL model development, validation, clinical transition, and quantification of free flap monitoring. An iOS application that predicted the probability of flap congestion based on computer vision was developed. The application calculated probability distribution that indicates the flap congestion risks. Accuracy, discrimination, and calibration tests were assessed for model performance evaluations.RESULTS: From a total of 1761 photographs of 642 patients, 122 patients were included during the clinical application period. Development (photographs =328), external validation (photographs =512), and clinical application (photographs =921) cohorts were assigned to corresponding time periods. The performance measurements of the DL model indicate a 92.2% training and a 92.3% validation accuracy. The discrimination (area under the receiver operating characteristic curve) was 0.99 (95% CI: 0.98-1.0) during internal validation and 0.98 (95% CI: 0.97-0.99) under external validation. Among clinical application periods, the application demonstrates 95.3% accuracy, 95.2% sensitivity, and 95.3% specificity. The probabilities of flap congestion were significantly higher in the congested group than in the normal group (78.3 (17.1)% versus 13.2 (18.1)%; 0.8%; 95% CI, P <0.001).CONCLUSION: The DL integrated smartphone application can accurately reflect and quantify flap condition; it is a convenient, accurate, and economical device that can improve patient safety and management and assist in monitoring flap physiology.
AB - BACKGROUND: Free flap monitoring is essential for postmicrosurgical management and outcomes but traditionally relies on human observers; the process is subjective and qualitative and imposes a heavy burden on staffing. To scientifically monitor and quantify the condition of free flaps in a clinical scenario, we developed and validated a successful clinical transitional deep learning (DL) model integrated application.MATERIAL AND METHODS: Patients from a single microsurgical intensive care unit between 1 April 2021 and 31 March 2022, were retrospectively analyzed for DL model development, validation, clinical transition, and quantification of free flap monitoring. An iOS application that predicted the probability of flap congestion based on computer vision was developed. The application calculated probability distribution that indicates the flap congestion risks. Accuracy, discrimination, and calibration tests were assessed for model performance evaluations.RESULTS: From a total of 1761 photographs of 642 patients, 122 patients were included during the clinical application period. Development (photographs =328), external validation (photographs =512), and clinical application (photographs =921) cohorts were assigned to corresponding time periods. The performance measurements of the DL model indicate a 92.2% training and a 92.3% validation accuracy. The discrimination (area under the receiver operating characteristic curve) was 0.99 (95% CI: 0.98-1.0) during internal validation and 0.98 (95% CI: 0.97-0.99) under external validation. Among clinical application periods, the application demonstrates 95.3% accuracy, 95.2% sensitivity, and 95.3% specificity. The probabilities of flap congestion were significantly higher in the congested group than in the normal group (78.3 (17.1)% versus 13.2 (18.1)%; 0.8%; 95% CI, P <0.001).CONCLUSION: The DL integrated smartphone application can accurately reflect and quantify flap condition; it is a convenient, accurate, and economical device that can improve patient safety and management and assist in monitoring flap physiology.
KW - Humans
KW - Free Tissue Flaps
KW - Retrospective Studies
KW - Deep Learning
KW - Hyperemia
KW - Smartphone
UR - http://www.scopus.com/inward/record.url?scp=85163913770&partnerID=8YFLogxK
U2 - 10.1097/JS9.0000000000000391
DO - 10.1097/JS9.0000000000000391
M3 - 文章
C2 - 37055021
AN - SCOPUS:85163913770
SN - 1743-9191
VL - 109
SP - 1584
EP - 1593
JO - International Journal of Surgery
JF - International Journal of Surgery
IS - 6
ER -