Department of Ultrasound, The Affiliated Dongyang Hospital of Wenzhou Medical University, Dongyang, China.
Department of Ultrasound, Cancer Hospital of the University of Chinese Academy of Sciences, Zhejiang Cancer Hospital, Hangzhou, China.
Front Endocrinol (Lausanne). 2023 Mar 8;14:1137322. doi: 10.3389/fendo.2023.1137322. eCollection 2023.
To investigate the effect of transrectal multimodal ultrasound combined with serum prostate-specific antigen (PSA)-related indicators and machine learning for the diagnosis of clinically significant prostate cancer.
Based on Gleason score of postoperative pathological results, the subjects were divided into clinically significant prostate cancer groups(GS>6)and non-clinically significant prostate cancer groups(GS ≤ 6). The independent risk factors were obtained by univariate logistic analysis. Artificial neural network (ANN), logistic regression (LR), support vector machine (SVM), decision tree (DT), random forest (RF), and K-nearest neighbor (KNN) machine learning models were combined with clinically significant prostate cancer risk factors to establish the machine learning model, calculate the model evaluation indicators, construct the receiver operating characteristic curve (ROC), and calculate the area under the curve (AUC).
Independent risk factor items (P< 0.05) were entered into the machine learning model. A comparison of the evaluation indicators of the model and the area under the ROC curve showed the ANN model to be best at predicting clinically significant prostate cancer, with a sensitivity of 80%, specificity of 88.6%, F1 score of 0.897, and the AUC was 0.855.
Establishing a machine learning model by rectal multimodal ultrasound and combining it with PSA-related indicators has definite application value in predicting clinically significant prostate cancer.
探讨经直肠多模态超声联合血清前列腺特异性抗原(PSA)相关指标及机器学习对临床显著前列腺癌的诊断价值。
根据术后病理 Gleason 评分,将研究对象分为临床显著前列腺癌组(GS>6)和非临床显著前列腺癌组(GS≤6)。采用单因素逻辑回归分析得到独立危险因素,将独立危险因素与机器学习模型(人工神经网络 ANN、逻辑回归 LR、支持向量机 SVM、决策树 DT、随机森林 RF、K 最近邻 KNN)相结合建立诊断模型,计算模型评价指标,构建受试者工作特征曲线(ROC),计算曲线下面积(AUC)。
将独立风险因素项目(P<0.05)纳入机器学习模型。模型评价指标和 ROC 曲线下面积比较显示,ANN 模型在预测临床显著前列腺癌方面表现最佳,其灵敏度为 80%,特异度为 88.6%,F1 评分为 0.897,AUC 为 0.855。
建立经直肠多模态超声联合 PSA 相关指标的机器学习模型对预测临床显著前列腺癌具有一定的应用价值。