Construction and evaluation of in-house methylation-sensitive SNaPshot system and three classification prediction models for identifying the tissue origin of body fluid.

Yating Fang, Man Chen, Bofeng Zhu
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引用次数: 2

Abstract

The identification of tissue origin of body fluid can provide clues and evidence for criminal case investigations. To establish an efficient method for identifying body fluid in forensic cases, eight novel body fluid-specific DNA methylation markers were selected in this study, and a multiplex singlebase extension reaction (SNaPshot) system for these markers was constructed for the identification of five common body fluids (venous blood, saliva, menstrual blood, vaginal fluid, and semen). The results indicated that the in-house system showed good species specificity, sensitivity, and ability to identify mixed biological samples. At the same time, an artificial body fluid prediction model and two machine learning prediction models based on the support vector machine (SVM) and random forest (RF) algorithms were constructed using previous research data, and these models were validated using the detection data obtained in this study (n=95). The accuracy of the prediction model based on experience was 95.79%; the prediction accuracy of the SVM prediction model was 100.00% for four kinds of body fluids except saliva (96.84%); and the prediction accuracy of the RF prediction model was 100.00% for all five kinds of body fluids. In conclusion, the in-house SNaPshot system and RF prediction model could achieve accurate tissue origin identification of body fluids.

体内甲基化敏感SNaPshot系统的构建与评价及体液组织来源识别的三种分类预测模型
体液组织来源的鉴定可以为刑事案件侦查提供线索和证据。为了建立一种有效的法医案件体液鉴定方法,本研究选取了8种新型体液特异性DNA甲基化标记,构建了针对这些标记的多重单碱基延伸反应(SNaPshot)体系,对5种常见的体液(静脉血、唾液、经血、阴道液和精液)进行鉴定。结果表明,该系统具有良好的物种特异性、敏感性和对混合生物样品的鉴别能力。同时,利用已有的研究数据构建了基于支持向量机(SVM)和随机森林(RF)算法的人工体液预测模型和两个机器学习预测模型,并利用本研究获得的检测数据(n=95)对这些模型进行了验证。基于经验的预测模型准确率为95.79%;除唾液(96.84%)外,SVM预测模型对4种体液的预测准确率为100.00%;RF预测模型对5种体液的预测准确率均为100.00%。综上所述,内部SNaPshot系统和RF预测模型可以实现体液组织来源的准确识别。
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