Song Wen-Yue, Zhang Xin, Zhang Qi, Zhang Peng-Jun, Zhang Rong
School of Life Science and Biopharmaceutics, Shenyang Pharmaceutical University, Shenyang 110016, Liaoning Province, China.
Key Laboratory of Carcinogenesis and Translational Research (Ministry of Education/Beijing), Interventional Therapy Department, Peking University Cancer Hospital and Institute, Beijing 100142, China.
World J Gastrointest Oncol. 2020 Feb 15;12(2):219-227. doi: 10.4251/wjgo.v12.i2.219.
Early screening for colorectal cancer (CRC) is important in clinical practice. However, the currently methods are inadequate because of high cost and low diagnostic value.
To develop a new examination method based on the serum biomarker panel for the early detection of CRC.
Three hundred and fifty cases of CRC, 300 cases of colorectal polyps and 360 cases of normal controls. Combined with the results of area under curve (AUC) and correlation analysis, the binary Logistic regression analysis of the remaining indexes which is in accordance with the requirements was carried out, and discriminant analysis, classification tree and artificial neural network analysis were used to analyze the remaining indexes at the same time.
By comparison of these methods, we obtained the ability to distinguish CRC from healthy control group, malignant disease group and benign disease group. Artificial neural network had the best diagnostic value when compared with binary logistic regression, discriminant analysis, and classification tree. The AUC of CRC and the control group was 0.992 (0.987, 0.997), sensitivity and specificity were 98.9% and 95.6%. The AUC of the malignant disease group and benign group was 0.996 (0.992, 0.999), sensitivity and specificity were 97.4% and 96.7%.
Artificial neural network diagnosis method can improve the sensitivity and specificity of the diagnosis of CRC, and a novel assistant diagnostic method was built for the early detection of CRC.
结直肠癌(CRC)的早期筛查在临床实践中很重要。然而,目前的方法由于成本高和诊断价值低而存在不足。
开发一种基于血清生物标志物 panel 的用于 CRC 早期检测的新检查方法。
350 例 CRC 患者、300 例结直肠息肉患者和 360 例正常对照。结合曲线下面积(AUC)结果和相关性分析,对符合要求的其余指标进行二元 Logistic 回归分析,同时采用判别分析、分类树和人工神经网络分析对其余指标进行分析。
通过比较这些方法,我们获得了区分 CRC 与健康对照组、恶性疾病组和良性疾病组的能力。与二元逻辑回归、判别分析和分类树相比,人工神经网络具有最佳诊断价值。CRC 组与对照组的 AUC 为 0.992(0.987,0.997),敏感性和特异性分别为 98.9%和 95.6%。恶性疾病组与良性组的 AUC 为 0.996(0.992,0.999),敏感性和特异性分别为 97.4%和 96.7%。
人工神经网络诊断方法可提高 CRC 诊断的敏感性和特异性,为 CRC 的早期检测建立了一种新型辅助诊断方法。