大数据
精密医学
数字化病理学
计算机科学
个性化医疗
数据集成
数据科学
医学影像学
基因组学
机器学习
人工智能
医学物理学
数据挖掘
生物信息学
医学
病理
基因组
生物
基因
生物化学
作者
Xiao Tan,Andrew Su,Hamideh Hajiabadi,Minh C. Tran,Quan Nguyen
出处
期刊:Methods in molecular biology
日期:2020-08-18
卷期号:: 209-228
被引量:11
标识
DOI:10.1007/978-1-0716-0826-5_10
摘要
With rapid advances in experimental instruments and protocols, imaging and sequencing data are being generated at an unprecedented rate contributing significantly to the current and coming big biomedical data. Meanwhile, unprecedented advances in computational infrastructure and analysis algorithms are realizing image-based digital diagnosis not only in radiology and cardiology but also oncology and other diseases. Machine learning methods, especially deep learning techniques, are already and broadly implemented in diverse technological and industrial sectors, but their applications in healthcare are just starting. Uniquely in biomedical research, a vast potential exists to integrate genomics data with histopathological imaging data. The integration has the potential to extend the pathologist’s limits and boundaries, which may create breakthroughs in diagnosis, treatment, and monitoring at molecular and tissue levels. Moreover, the applications of genomics data are realizing the potential for personalized medicine, making diagnosis, treatment, monitoring, and prognosis more accurate. In this chapter, we discuss machine learning methods readily available for digital pathology applications, new prospects of integrating spatial genomics data on tissues with tissue morphology, and frontier approaches to combining genomics data with pathological imaging data. We present perspectives on how artificial intelligence can be synergized with molecular genomics and imaging to make breakthroughs in biomedical and translational research for computer-aided applications.
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