深度学习和机器学习在计算医学中的应用

IF 0.5
R. Adiga, Titas Biswas, P. Shyam
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引用次数: 1

摘要

由于医疗技术的进步,与大数据和人工智能并行,计算医学应运而生。一种治疗复杂疾病的新方法正在发展,被称为“精准医学”,它由大数据推动,从个体差异中提取有意义的信息。最前沿的是旨在促进精准医疗领域的生物医学研究。虽然传统的机器学习方法已经成功地建立了癌症诊断到sars-cov2肺部感染的模型,但现代深度学习方法的出现在基因组学、电子健康记录和药物开发方面取得了惊人的增长。深度学习在医学中的应用面临的挑战包括缺乏数据、隐私、数据的异质性和可解释性。对这些问题进行分析和探讨,为进一步完善深度学习在医疗健康领域的应用提供参考。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of Deep Learning and Machine Learning in Computational Medicine
Computational medicine has emerged due to the advances in medical technology in parallel with big data and artificial intelligence. A new way of treating complex diseases is evolving called 'Precision Medicine' fueled by big data extracting meaningful information from individual variability. At the forefront is biomedical research aiming to promote the area of precision medicine. Though traditional machine learning methods have built successful models for cancer diagnosis to sars-cov2 pulmonary infection, the advent of modern deep learning methods has had phenomenal growth in genomics, electronic health records, and drug development. The challenges in Deep learning applications in medicine include lack of data, privacy, heterogeneity of data, and interpretability. Analysis and discussion on these problems provide a reference to improve the application of deep learning in medical health.
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来源期刊
Journal of Biochemical Technology
Journal of Biochemical Technology BIOCHEMISTRY & MOLECULAR BIOLOGY-
自引率
40.00%
发文量
18
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