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Flap failure prediction in microvascular tissue reconstruction using machine learning algorithms.

World journal of clinical cases 2022 Vol.10(12) p. 3729-3738

Shi YC, Li J, Li SJ, Li ZP, Zhang HJ, Wu ZY, Wu ZY

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Abstract

[BACKGROUND] Microvascular tissue reconstruction is a well-established, commonly used technique for a wide variety of the tissue defects. However, flap failure is associated with an additional hospital stay, medical cost burden, and mental stress. Therefore, understanding of the risk factors associated with this event is of utmost importance.

[AIM] To develop machine learning-based predictive models for flap failure to identify the potential factors and screen out high-risk patients.

[METHODS] Using the data set of 946 consecutive patients, who underwent microvascular tissue reconstruction of free flap reconstruction for head and neck, breast, back, and extremity, we established three machine learning models including random forest classifier, support vector machine, and gradient boosting. Model performances were evaluated by the indicators such as area under the curve of receiver operating characteristic curve, accuracy, precision, recall, and F1 score. A multivariable regression analysis was performed for the most critical variables in the random forest model.

[RESULTS] Post-surgery, the flap failure event occurred in 34 patients (3.6%). The machine learning models based on various preoperative and intraoperative variables were successfully developed. Among them, the random forest classifier reached the best performance in receiver operating characteristic curve, with an area under the curve score of 0.770 in the test set. The top 10 variables in the random forest were age, body mass index, ischemia time, smoking, diabetes, experience, prior chemotherapy, hypertension, insulin, and obesity. Interestingly, only age, body mass index, and ischemic time were statistically associated with the outcomes.

[CONCLUSION] Machine learning-based algorithms, especially the random forest classifier, were very important in categorizing patients at high risk of flap failure. The occurrence of flap failure was a multifactor-driven event and was identified with numerous factors that warrant further investigation. Importantly, the successful application of machine learning models may help the clinician in decision-making, understanding the underlying pathologic mechanisms of the disease, and improving the long-term outcome of patients.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
시술 flap 피판재건술 dict 6
시술 microvascular 미세수술 dict 3
시술 free flap 피판재건술 dict 1
해부 breast 유방 dict 1
해부 microvascular tissue scispacy 1
해부 tissue scispacy 1
질환 head and neck, C0460004
Head and neck structure
scispacy 1
질환 ischemia C0022116
Ischemia
scispacy 1
질환 diabetes C0011847
Diabetes
scispacy 1
질환 hypertension C0020538
Hypertensive disease
scispacy 1
질환 obesity C0028754
Obesity
scispacy 1
질환 head and neck scispacy 1
기타 insulin scispacy 1

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