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A multi-task learning method for analyzing microbiota as cancer immunotherapy signal

机译:一种分析微生物群作为癌症免疫疗法信号的多任务学习方法

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Researches have found that tumor immunotherapy can only work for some patients, and the intestinal microbiota is one of the important factors affecting the responses of patients with cancer to immune checkpoint blockade therapy. It is highly desirable to develop computational methods that can predict whether a patient with cancer will have positive effects on cancer immunotherapy by analyzing intestinal microorganisms of the patient. In this study, a multi-task model is introduced to predict the efficacy of cancer immunotherapy on a patient who suffered from non-small cell lung cancer or renal cell carcinoma. The results demonstrate the multi-task model outperforms several single-task methods. Therefore, we believe the multi-task idea can be used to predict the efficacy of cancer immunotherapy based on the gut microbe, which would be important to cancer patients.
机译:研究发现肿瘤免疫疗法只能为一些患者工作,肠道微生物群是影响癌症患者对免疫检查点梗死治疗的重要因素之一。通过分析患者的肠道微生物,制定能够预测患有癌症患者是否对癌症免疫疗法产生积极影响的计算方法。在这项研究中,引入了一种多任务模型,以预测癌症免疫疗法对患有非小细胞肺癌或肾细胞癌的患者的功效。结果展示了多任务模型优于几种单项任务方法。因此,我们认为,多任务思想可用于预测基于肠道微生物的癌症免疫疗法的疗效,这对癌症患者至关重要。

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