Predicting chemotherapy responsiveness in gastric cancer through machine learning analysis of genome, immune, and neutrophil signatures.

IF 6 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY Gastric Cancer Pub Date : 2025-03-01 Epub Date: 2024-12-02 DOI:10.1007/s10120-024-01569-4
Shota Sasagawa, Yoshitaka Honma, Xinxin Peng, Kazuhiro Maejima, Koji Nagaoka, Yukari Kobayashi, Ayako Oosawa, Todd A Johnson, Yuki Okawa, Han Liang, Kazuhiro Kakimi, Yasuhide Yamada, Hidewaki Nakagawa
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Abstract

Background: Gastric cancer is a major oncological challenge, ranking highly among causes of cancer-related mortality worldwide. This study was initiated to address the variability in patient responses to combination chemotherapy, highlighting the need for personalized treatment strategies based on genomic data.

Methods: We analyzed whole-genome and RNA sequences from biopsy specimens of 65 advanced gastric cancer patients before their chemotherapy treatment. Using machine learning techniques, we developed a model with 123 omics features, such as immune signatures and copy number variations, to predict their chemotherapy outcomes.

Results: The model demonstrated a prediction accuracy of 70-80% in forecasting chemotherapy responses in both test and validation cohorts. Notably, tumor-associated neutrophils emerged as significant predictors of treatment efficacy. Further single-cell analyses from cancer tissues revealed different neutrophil subgroups with potential antitumor activities suggesting their usefulness as biomarkers for treatment decisions.

Conclusions: This study confirms the utility of machine learning in advancing personalized medicine for gastric cancer by identifying tumor-associated neutrophils and their subgroups as key indicators of chemotherapy response. These findings could lead to more tailored and effective treatment plans for patients.

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通过基因组、免疫和中性粒细胞特征的机器学习分析预测胃癌化疗反应性。
背景:胃癌是一个主要的肿瘤学挑战,在全球癌症相关死亡原因中排名很高。这项研究旨在解决患者对联合化疗反应的可变性,强调基于基因组数据的个性化治疗策略的必要性。方法:分析65例晚期胃癌患者化疗前活检标本的全基因组和RNA序列。利用机器学习技术,我们开发了一个具有123个组学特征的模型,如免疫特征和拷贝数变化,以预测他们的化疗结果。结果:该模型在测试和验证队列中预测化疗反应的预测准确率为70-80%。值得注意的是,肿瘤相关的中性粒细胞成为治疗效果的重要预测因子。进一步对癌症组织的单细胞分析显示,不同的中性粒细胞亚群具有潜在的抗肿瘤活性,这表明它们可以作为治疗决策的生物标志物。结论:本研究通过识别肿瘤相关中性粒细胞及其亚群作为化疗反应的关键指标,证实了机器学习在推进胃癌个性化治疗中的效用。这些发现可以为患者提供更有针对性和更有效的治疗方案。
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来源期刊
Gastric Cancer
Gastric Cancer 医学-胃肠肝病学
CiteScore
14.70
自引率
2.70%
发文量
80
审稿时长
6-12 weeks
期刊介绍: Gastric Cancer is an esteemed global forum that focuses on various aspects of gastric cancer research, treatment, and biology worldwide. The journal promotes a diverse range of content, including original articles, case reports, short communications, and technical notes. It also welcomes Letters to the Editor discussing published articles or sharing viewpoints on gastric cancer topics. Review articles are predominantly sought after by the Editor, ensuring comprehensive coverage of the field. With a dedicated and knowledgeable editorial team, the journal is committed to providing exceptional support and ensuring high levels of author satisfaction. In fact, over 90% of published authors have expressed their intent to publish again in our esteemed journal.
期刊最新文献
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