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Renal Function Evaluation Survey: Artificial Intelligence for the Next Decade?

机译:肾功能评估调查:未来十年的人工智能?

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Accurate assessment of renal microstructure and function remains a key point for the prediction and diagnosis of chronic kidney disease (CKD). Applications of novel medical imaging techniques offer a non-invasive and safer tool for analyzing CKD as it allows health care providers to identify morphological, functional and molecular information that detects changes in renal tissue properties and functionalities. Recently, the ability of artificial intelligence to address information retrieval and other critical issues in big medical data analytics has led to a great interest in CKD diagnosis. Besides qualitative analysis of renal medical imaging, texture analysis combined with machine learning has emerged as a promising technique to quantify renal tissue heterogeneity, thus providing a complementary tool for renal function decline prediction. Most importantly, deep learning holds the potential to be a novel approach for renal dysfunction monitoring. This paper proposes a survey focusing on the most recent approaches for using texture analysis and machine learning techniques that can be integrated in clinical research in order to improve renal dysfunction diagnosis and prognosis.
机译:准确评估肾微观结构和功能仍然是慢性肾病(CKD)预测和诊断的关键点。新型医学成像技术的应用提供了一种非侵入性和更安全的工具,用于分析CKD,因为它允许医疗保健提供者识别检测肾组织特性和功能变化的形态学,功能和分子信息。最近,人工智能解决信息检索和大医学数据分析中的其他关键问题的能力导致了对CKD诊断的兴趣。除了对肾脏医学成像的定性分析外,纹理分析与机器学习相结合,作为量化肾组织异质性的有希望的技术,从而提供肾功能下降预测的互补工具。最重要的是,深度学习具有肾功能障碍监测的新方法。本文提出了一种专注于使用纹理分析和机器学习技术的最新方法的调查,可融入临床研究中,以改善肾功能不全的诊断和预后。

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