Shi Yu-Cang, Li Jie, Li Shao-Jie, Li Zhan-Peng, Zhang Hui-Jun, Wu Ze-Yong, Wu Zhi-Yuan
Department of Plastic Surgery, Affiliated Hospital of Guangdong Medical University, Zhanjiang 524001, Guangdong Province, China.
World J Clin Cases. 2022 Apr 26;10(12):3729-3738. doi: 10.12998/wjcc.v10.i12.3729.
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.
To develop machine learning-based predictive models for flap failure to identify the potential factors and screen out high-risk patients.
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.
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.
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.
微血管组织重建是一种成熟的、常用于修复各种组织缺损的技术。然而,皮瓣失败会导致额外的住院时间、医疗费用负担和精神压力。因此,了解与此事件相关的风险因素至关重要。
开发基于机器学习的皮瓣失败预测模型,以识别潜在因素并筛选出高危患者。
利用946例连续接受头颈部、乳房、背部和四肢游离皮瓣微血管组织重建患者的数据集,我们建立了三种机器学习模型,包括随机森林分类器、支持向量机和梯度提升。通过受试者工作特征曲线下面积、准确性、精确性、召回率和F1分数等指标评估模型性能。对随机森林模型中最关键的变量进行多变量回归分析。
术后,34例患者(3.6%)发生皮瓣失败事件。基于各种术前和术中变量的机器学习模型成功开发。其中,随机森林分类器在受试者工作特征曲线中表现最佳,测试集中曲线下面积得分为0.770。随机森林中排名前10的变量是年龄、体重指数、缺血时间、吸烟、糖尿病、经验、既往化疗、高血压、胰岛素和肥胖。有趣的是,只有年龄、体重指数和缺血时间与结果有统计学关联。
基于机器学习的算法,尤其是随机森林分类器,在对皮瓣失败高危患者进行分类方面非常重要。皮瓣失败的发生是一个多因素驱动的事件,由众多因素导致,值得进一步研究。重要的是,机器学习模型的成功应用可能有助于临床医生进行决策,并了解疾病的潜在病理机制,改善患者的长期预后。