Development of a machine-learning model for therapeutic efficacy prediction of preoperative treatment for esophageal cancer using single nucleotide variants of autophagy-related genes

Yutak Miyawaki, Masataka Hirasaki, Yasuo Kamakura, Tomonori Kawasaki, Yasutaka Baba, Tetsuya Sato, Satoshi Yamasaki, Hisayo Fukushima, Kousuke Uranishi, Yoshinori Makino, Hiroshi Sato, Tetsuya Hamaguchi
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Abstract

Neoadjuvant chemotherapy with cisplatin + 5-fluorouracil followed by radical surgery is the standard treatment for stage II and III esophageal cancers. Although, a more potent regimen comprising cisplatin + 5-fluorouracil with docetaxel, has shown superiority in overall survival compared to the cisplatin + 5-fluorouracil regimen, it involves worsening of Grade 3 or higher adverse events due to docetaxel. Based on these reports, this study aimed to construct a prognostic system for cisplatin + 5-fluorouracil regimens, particularly for locally advanced cancers, to guide selection of neoadjuvant chemotherapy. Biopsy specimens from 82 patients who underwent a cisplatin + 5-fluorouracil regimen plus radical surgery at Saitama Medical University International Medical Center between May 2012 and June 2020 were analyzed. Variants in 56 autophagy- and esophageal cancer-related genes were identified using targeted enrichment sequencing. Overall, 13 single nucleotide variants, including eight non-synonymous group single nucleotide variants predicting recurrence were identified using Fisher's exact test with recurrence as a two-group event, which showed a significant difference (p < 0.05). Additionally, machine learning was used to predict recurrence using 21 features, including eight patient backgrounds. The results showed that the Naive Bayes was highly reliable with an accuracy of 0.88 and Area Under the Curve of 0.9. Thus, we constructed a machine learning model to predict recurrence in patients with esophageal cancer treated with a cisplatin + 5-fluorouracil regimen. We believe that our results will provide useful guidance for the selection of neoadjuvant adjuvant chemotherapy, including the avoidance of docetaxel.
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利用自噬相关基因的单核苷酸变异开发食管癌术前治疗疗效预测的机器学习模型
用顺铂+5-氟尿嘧啶进行新辅助化疗,然后进行根治性手术,是II期和III期食管癌的标准治疗方法。尽管与顺铂+5-氟尿嘧啶方案相比,由顺铂+5-氟尿嘧啶和多西他赛组成的更强效方案在总生存率方面更具优势,但它涉及到多西他赛导致的3级或更高不良反应的恶化。基于这些报道,本研究旨在构建顺铂+5-氟尿嘧啶方案的预后系统,尤其是针对局部晚期癌症,以指导新辅助化疗的选择。研究人员分析了2012年5月至2020年6月期间在埼玉医科大学国际医疗中心接受顺铂+5-氟尿嘧啶方案加根治术的82名患者的活检标本。采用靶向富集测序法鉴定了56个自噬和食管癌相关基因的变异。总体而言,通过费雪精确检验(Fisher's exact test)确定了13个单核苷酸变异,其中包括8个非同义组单核苷酸变异,这些变异可预测复发,复发为两组事件,显示出显著差异(p <0.05)。此外,还使用机器学习方法,利用 21 个特征(包括 8 个患者背景)预测复发。结果显示,Naive Bayes 非常可靠,准确率为 0.88,曲线下面积为 0.9。因此,我们构建了一个机器学习模型来预测接受顺铂+5-氟尿嘧啶方案治疗的食管癌患者的复发情况。我们相信,我们的结果将为选择新辅助辅助化疗(包括避免使用多西他赛)提供有用的指导。
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