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Precision diagnostics based on machine learning-derived imaging signatures

机译:基于机器学习派生成像签名的精度诊断

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摘要

The complexity of modern multi-parametric MRI has increasingly challenged conventional interpretations of such images. Machine learning has emerged as a powerful approach to integrating diverse and complex imaging data into signatures of diagnostic and predictive value. It has also allowed us to progress from group comparisons to imaging biomarkers that offer value on an individual basis. We review several directions of research around this topic, emphasizing the use of machine learning in personalized predictions of clinical outcome, in breaking down broad umbrella diagnostic categories into more detailed and precise subtypes, and in non-invasively estimating cancer molecular characteristics. These methods and studies contribute to the field of precision medicine, by introducing more specific diagnostic and predictive biomarkers of clinical outcome, therefore pointing to better matching of treatments to patients.
机译:现代多参数MRI的复杂性越来越受到这些图像的传统解释。 机器学习已成为将多样化和复杂的成像数据集成到诊断和预测价值的签名中的强大方法。 它还允许我们从集团比较到成像生物标志物,以单独提供价值。 我们审查了围绕本主题的几个研究方向,强调了在临床结果的个性化预测中使用机器学习,将宽伞诊断类别分解为更详细和精确的亚型,以及非侵入性估算癌症分子特征。 这些方法和研究通过引入临床结果的更具体的诊断和预测生物标志物来促进精密药物的领域,因此指向患者的治疗更好地匹配。

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