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Salivary metabolomics with alternative decision tree-based machine learning methods for breast cancer discrimination

机译:具有替代决策树的乳腺癌歧视方法的唾液代谢组合方法

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Purpose The aim of this study is to explore new salivary biomarkers to discriminate breast cancer patients from healthy controls. Methods Saliva samples were collected after 9 h fasting and were immediately stored at - 80 degrees C. Capillary electrophoresis and liquid chromatography with mass spectrometry were used to quantify hundreds of hydrophilic metabolites. Conventional statistical analyses and artificial intelligence-based methods were used to assess the discrimination abilities of the quantified metabolites. A multiple logistic regression (MLR) model and an alternative decision tree (ADTree)-based machine learning method were used. The generalization abilities of these mathematical models were validated in various computational tests, such as cross-validation and resampling methods. Results One hundred sixty-six unstimulated saliva samples were collected from 101 patients with invasive carcinoma of the breast (IC), 23 patients with ductal carcinoma in situ (DCIS), and 42 healthy controls (C). Of the 260 quantified metabolites, polyamines were significantly elevated in the saliva of patients with breast cancer. Spermine showed the highest area under the receiver operating characteristic curves [0.766; 95% confidence interval (CI) 0.671-0.840, P < 0.0001] to discriminate IC from C. In addition to spermine, polyamines and their acetylated forms were elevated in IC only. Two hundred each of two-fold, five-fold, and ten-fold cross-validation using different random values were conducted and the MLR model had slightly better accuracy. The ADTree with an ensemble approach showed higher accuracy (0.912; 95% CI 0.838-0.961, P < 0.0001). These prediction models also included spermine as a predictive factor. Conclusions These data indicated that combinations of salivary metabolomics with the ADTree-based machine learning methods show potential for non-invasive screening of breast cancer.
机译:目的本研究的目的是探索新的唾液生物标志物,以区分乳腺癌患者免受健康对照患者。方法在9小时禁食后收集唾液样品,并立即储存在-80℃。毛细管电泳和质谱法液相色谱法量化数百个亲水性代谢物。常规统计分析和基于人工智能的方法用于评估定量代谢物的判别能力。使用多个逻辑回归(MLR)模型和替代决策树(Adtree)基础的机器学习方法。这些数学模型的泛化能力在各种计算测试中验证,例如交叉验证和重采样方法。结果从101例乳腺(IC)的侵袭性癌患者中收集了一百六十六六个未刺激的唾液样品,原位(DCIS)和42例健康对照(C)。在260个量化的代谢物中,乳腺癌患者的唾液中多胺显着升高。精子显示在接收器下的最高面积,操作特性曲线[0.766; 95%置信区间(CI)0.671-0.840,P <0.0001]鉴别C.除了精霉,多胺及其乙酰化形式仅在IC中升高。使用不同随机值的两百倍,五倍和十倍的交叉验证,并且MLR模型略微更好。具有集合方法的Adtree表现出更高的精度(0.912; 95%CI 0.838-0.961,P <0.0001)。这些预测模型也包括精霉素作为预测因素。结论这些数据表明,唾液代谢组合与基于Adtree的机器学习方法的组合显示出乳腺癌非侵入性筛查的潜力。

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