Biological Data Resources and Machine Learning Frameworks for Hematology Research.

Ying Yi, Yongfei Hu, Juanjuan Kang, Qifa Liu, Yan Huang, Dong Wang
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Abstract

Hematology research has greatly benefited from the integration of diverse biological data resources and advanced machine learning frameworks. This integration has not only deepened our understanding of blood diseases such as leukemia and lymphoma, but also enhanced diagnostic accuracy and personalized treatment strategies. By applying machine learning algorithms to analyze large-scale biological data, researchers are able to more effectively identify disease patterns, predict treatment responses, and provide new perspectives for the diagnosis and treatment of hematologic disorders. Here, we provide an overview of the current landscape of biological data resources and the application of machine learning frameworks pertinent to hematology research.

血液学研究的生物数据资源和机器学习框架。
血液学研究得益于多种生物数据资源的整合和先进的机器学习框架。这种整合不仅加深了我们对白血病和淋巴瘤等血液疾病的认识,而且提高了诊断的准确性和个性化的治疗策略。通过应用机器学习算法来分析大规模生物数据,研究人员能够更有效地识别疾病模式,预测治疗反应,并为血液病的诊断和治疗提供新的视角。在这里,我们概述了当前生物数据资源的概况以及与血液学研究相关的机器学习框架的应用。
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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