Kang Chun-Bo, Li Xiao-Wei, Hou Shi-Yang, Chi Xiao-Qian, Shan Hai-Feng, Zhang Qi-Jun, Li Xu-Bin, Zhang Jie, Liu Tie-Jun
Department of General Surgery, Beijing Rehabilitation Hospital of Capital Medical University, Beijing, China.
Ann Transl Med. 2021 May;9(10):835. doi: 10.21037/atm-20-7883.
This study aimed to establish machine learning models for preoperative prediction of the pathological types of acute appendicitis.
Based on histopathology, 136 patients with acute appendicitis were included and divided into three types: acute simple appendicitis (SA, n=8), acute purulent appendicitis (PA, n=104), and acute gangrenous or perforated appendicitis (GPA, n=24). Patients with SA/PA and PA/GPA were divided into training (70%) and testing (30%) sets. Statistically significant features (P<0.05) for pathology prediction were selected by univariate analysis. According to clinical and laboratory data, machine learning logistic regression (LR) models were built. Area under receiver operating characteristic curve (AUC) was used for model assessment.
Nausea and vomiting, abdominal pain time, neutrophils (NE), CD4 T cell, helper T cell, B lymphocyte, natural killer (NK) cell counts, and CD4/CD8 ratio were selected features for the SA/PA group (P<0.05). Nausea and vomiting, abdominal pain time, the highest temperature, CD8 T cell, procalcitonin (PCT), and C-reactive protein (CRP) were selected features for the PA/GPA group (P<0.05). By using LR models, the blood markers can distinguish SA and PA (training AUC =0.904, testing AUC =0.910). To introduce additional clinical features, the AUC for the testing set increased to 0.926. In the PA/GPA prediction model, AUC with blood biomarkers was 0.834 for the training and 0.821 for the testing set. Combining with clinical features, the AUC for the testing set increased to 0.854.
Peripheral blood biomarkers can predict the pathological type of SA from PA and GPA. Introducing clinical symptoms could further improve the prediction performance.
本研究旨在建立用于术前预测急性阑尾炎病理类型的机器学习模型。
基于组织病理学,纳入136例急性阑尾炎患者,分为三种类型:急性单纯性阑尾炎(SA,n = 8)、急性化脓性阑尾炎(PA,n = 104)和急性坏疽性或穿孔性阑尾炎(GPA,n = 24)。将SA/PA组和PA/GPA组患者分为训练集(70%)和测试集(30%)。通过单因素分析选择对病理预测具有统计学意义的特征(P<0.05)。根据临床和实验室数据,建立机器学习逻辑回归(LR)模型。采用受试者操作特征曲线下面积(AUC)进行模型评估。
恶心呕吐、腹痛时间、中性粒细胞(NE)、CD4 T细胞、辅助性T细胞、B淋巴细胞、自然杀伤(NK)细胞计数以及CD4/CD8比值是SA/PA组的选择特征(P<0.05)。恶心呕吐、腹痛时间、最高体温、CD8 T细胞、降钙素原(PCT)和C反应蛋白(CRP)是PA/GPA组的选择特征(P<0.05)。使用LR模型,血液标志物可区分SA和PA(训练集AUC = 0.904,测试集AUC = 0.910)。引入额外的临床特征后,测试集的AUC增至0.926。在PA/GPA预测模型中,血液生物标志物的训练集AUC为0.834,测试集AUC为0.821。结合临床特征后,测试集的AUC增至0.854。
外周血生物标志物可预测SA与PA及GPA的病理类型。引入临床症状可进一步提高预测性能。