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Statistical Physics for Medical Diagnostics: Learning Inference and Optimization Algorithms

机译:医疗诊断统计物理学:学习推理和优化算法

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摘要

It is widely believed that cooperation between clinicians and machines may address many of the decisional fragilities intrinsic to current medical practice. However, the realization of this potential will require more precise definitions of disease states as well as their dynamics and interactions. A careful probabilistic examination of symptoms and signs, including the molecular profiles of the relevant biochemical networks, will often be required for building an unbiased and efficient diagnostic approach. Analogous problems have been studied for years by physicists extracting macroscopic states of various physical systems by examining microscopic elements and their interactions. These valuable experiences are now being extended to the medical field. From this perspective, we discuss how recent developments in statistical physics, machine learning and inference algorithms are coming together to improve current medical diagnostic approaches.
机译:人们普遍认为,临床医生和机器之间的合作可以解决当前医疗实践的许多抵决疾病。然而,这种潜力的实现将需要更精确的疾病状态定义以及它们的动态和相互作用。通常需要仔细概率检查症状和标志,包括相关生化网络的分子谱,建立一个无偏见和有效的诊断方法。通过检查微观元素及其相互作用来研究各种物理学家宏观状态的物理学家多年来研究了类似的问题。这些有价值的经历目前正在扩展到医疗领域。从这个角度来看,我们讨论统计物理,机器学习和推理算法的最新发展如何聚集在一起,以提高现有的医疗诊断方法。

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