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- Title
Development of an Automated Free Flap Monitoring System Based on Artificial Intelligence.
- Authors
Kim, Jisu; Lee, Sang Mee; Kim, Da Eun; Kim, Sungjin; Chung, Myung Jin; Kim, Zero; Kim, Taeyoung; Lee, Kyeong-Tae
- Abstract
Key Points: Question: Is it feasible to develop an automated free flap monitoring system using artificial intelligence–based deep learning techniques, requiring minimal human intervention? Findings: In this prognostic study, models capable of automatically segmenting the flap area from images and detecting anomalies in flap perfusion status based on the captured images were developed. The integrated automated flap monitoring system demonstrated effective application in a clinical setting. Meaning: This study suggests that an artificial intelligence–based automated system may enable efficient flap monitoring with minimal use of clinician time. Importance: Meticulous postoperative flap monitoring is essential for preventing flap failure and achieving optimal results in free flap operations, for which physical examination has remained the criterion standard. Despite the high reliability of physical examination, the requirement of excessive use of clinician time has been considered a main drawback. Objective: To develop an automated free flap monitoring system using artificial intelligence (AI), minimizing human involvement while maintaining efficiency. Design, Setting, and Participants: In this prognostic study, the designed system involves a smartphone camera installed in a location with optimal flap visibility to capture photographs at regular intervals. The automated program identifies the flap area, checks for notable abnormalities in its appearance, and notifies medical staff if abnormalities are detected. Implementation requires 2 AI-based models: a segmentation model for automatic flap recognition in photographs and a grading model for evaluating the perfusion status of the identified flap. To develop this system, flap photographs captured for monitoring were collected from patients who underwent free flap–based reconstruction from March 1, 2020, to August 31, 2023. After the 2 models were developed, they were integrated to construct the system, which was applied in a clinical setting in November 2023. Exposure: Conducting the developed automated AI-based flap monitoring system. Main Outcomes and Measures: Accuracy of the developed models and feasibility of clinical application of the system. Results: Photographs were obtained from 305 patients (median age, 62 years [range, 8-86 years]; 178 [58.4%] were male). Based on 2068 photographs, the FS-net program (a customized model) was developed for flap segmentation, demonstrating a mean (SD) Dice similarity coefficient of 0.970 (0.001) with 5-fold cross-validation. For the flap grading system, 11 112 photographs from the 305 patients were used, encompassing 10 115 photographs with normal features and 997 with abnormal features. Tested on 5506 photographs, the DenseNet121 model demonstrated the highest performance with an area under the receiver operating characteristic curve of 0.960 (95% CI, 0.951-0.969). The sensitivity for detecting venous insufficiency was 97.5% and for arterial insufficiency was 92.8%. When applied to 10 patients, the system successfully conducted 143 automated monitoring sessions without significant issues. Conclusions and Relevance: The findings of this study suggest that a novel automated system may enable efficient flap monitoring with minimal use of clinician time. It may be anticipated to serve as an effective surveillance tool for postoperative free flap monitoring. Further studies are required to verify its reliability. This prognostic study investigates an automated free flap monitoring system that uses artificial intelligence (AI)–based deep learning techniques, minimizing human involvement for assessment of flap perfusion status.
- Subjects
PATIENT monitoring equipment; PUBLIC health surveillance; POSTOPERATIVE care; LABELS; LABOR productivity; SMARTPHONES; PREDICTION models; CRONBACH'S alpha; RESEARCH funding; ARTIFICIAL intelligence; PILOT projects; RESEARCH evaluation; MEDICAL care; RETROSPECTIVE studies; PHOTOGRAPHY; DESCRIPTIVE statistics; SURGICAL flaps; EXPERIMENTAL design; LONGITUDINAL method; HOSPITAL medical staff; RESEARCH methodology; AUTOMATION; PATIENT monitoring; EARLY diagnosis; COMPARATIVE studies; DATA analysis software; CONFIDENCE intervals; PSYCHOSOCIAL factors; SENSITIVITY &; specificity (Statistics); EMPLOYEES' workload
- Publication
JAMA Network Open, 2024, Vol 7, Issue 7, pe2424299
- ISSN
2574-3805
- Publication type
Article
- DOI
10.1001/jamanetworkopen.2024.24299