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Deep learning for image analysis: Personalizing medicine closer to the point of care

机译:深度学习图像分析:个性化医学更接近关怀的点

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The precision-based revolution in medicine continues to demand stratification of patients into smaller and more personalized subgroups. While genomic technologies have largely led this movement, diagnostic results can take days to weeks to generate. Management at, or closer to, the point of care still heavily relies on the subjective qualitative interpretation of clinical and diagnostic imaging findings. New and emerging technological advances in artificial intelligence (Al) now appear poised to help bring objectivity and precision to these traditionally qualitative analytic tools. In particular, one specific form of Al, known as deep learning, is achieving expert-level disease classifications in many areas of diagnostic medicine dependent on visual and image-based findings. Here, we briefly review concepts of deep learning, and more specifically recent developments in convolutional neural networks (CNNs), to highlight their transformative potential in personalized medicine and, in particular, diagnostic histopathology. Understanding the opportunities and challenges of these quantitative machine-based decision support tools is critical to their widespread introduction into routine diagnostics.
机译:基于精确的医学革命仍然需要将患者的分层进行更小,更个性化的亚组。虽然基因组技术在很大程度上导致了这种运动,但诊断结果可能需要数天才能产生。管理点或更接近,护理点仍然严重依赖于临床和诊断成像结果的主观定性解释。人工智能(AL)的新技术进步现在似乎有助于帮助对这些传统的定性分析工具带来客观性和精度。特别地,一种特定形式的Al,称为深度学习,正在依赖于视觉和图像的发现的许多诊断药物的专家水平疾病分类。在这里,我们简要介绍了深度学习的概念,更具体地说是卷积神经网络(CNNS)的最新发展,以突出个性化药物的转化性潜力,特别是诊断组织病理学。了解这些基于机器的决策支持工具的机遇和挑战对他们广泛的常规诊断引入至关重要。

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