Machine Learning Application in cfDNA Analysis to Achieve Tumour Assessment

Zheng Yiting, Huang Menghan, Gong Zixin, Li Rui, Guo Yifeiyang, Gan Haiting
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Abstract

Breast cancer (BC) is the leading cause of cancer in women and the second leading cause of cancer-related death. Early and accurate screening of BC is a promising way of reducing the proportion of patients with advanced stages of BC. In recent years, the non-invasive test of tumour diagnosis by assessing the level of Plasma cell-free DNA (cfDNA) has become a research hotspot. Here, we demonstrate the use of random forest models to predict BC by evaluating the levels of 26 known breast cancer-related cfDNA methylation molecular markers (model-tested accuracy of 67.88%). Then, we improved the accuracy of the model to 71.52% by parameter optimization. In addition, considering that the diagnosis of BC is closely related to the health of every female, we have extended the project from scientific research to social investigation by carrying out a sample survey of Chinese college students to understand various perspectives on the application of artificial intelligence in the diagnosis of diseases. We found that the response was rather optimistic, while some participants showed concerns about the maturity of the technology and the disclosure of privacy. Therefore, future research should focus on the optimisation of the machine learning model, so as to effectively improve the accuracy of diagnosis and provide better pre-service for the population at risk of cancer.
机器学习在cfDNA分析中的应用以实现肿瘤评估
乳腺癌(BC)是妇女癌症的主要原因,也是癌症相关死亡的第二大原因。早期准确筛查BC是降低晚期BC患者比例的一种有希望的方法。近年来,通过检测游离血浆DNA (Plasma cell free DNA, cfDNA)水平进行肿瘤诊断的无创检测已成为研究热点。在这里,我们通过评估26种已知的乳腺癌相关cfDNA甲基化分子标记的水平,证明了使用随机森林模型来预测乳腺癌(模型测试的准确率为67.88%)。然后通过参数优化,将模型的准确率提高到71.52%。此外,考虑到BC的诊断与每个女性的健康息息相关,我们将项目从科学研究扩展到社会调查,通过对中国大学生进行抽样调查,了解人工智能在疾病诊断中的应用的各种观点。我们发现,回应是相当乐观的,而一些参与者对技术的成熟度和隐私的泄露表示担忧。因此,未来的研究应侧重于优化机器学习模型,从而有效提高诊断的准确性,为癌症高危人群提供更好的前期服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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