How artificial intelligence is transforming nephrology.

IF 2.2 4区 医学 Q2 UROLOGY & NEPHROLOGY
Miguel Hueso, Alfredo Vellido
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引用次数: 0

Abstract

Current research in nephrology is increasingly focused on elucidating the complexity inherent in tightly interwoven molecular systems and their correlation with pathology and related therapeutics, including dialysis and renal transplantation. Rapid advances in the omics sciences, medical device sensorization, and networked digital medical devices have made such research increasingly data centered. Data-centric science requires the support of computationally powerful and sophisticated tools able to handle the overflow of novel biomarkers and therapeutic targets. This is a context in which artificial intelligence (AI) and, more specifically, machine learning (ML) can provide a clear analytical advantage, given the rapid advances in their ability to harness multimodal data, from genomic information to signal, image and even heterogeneous electronic health records (EHR). However, paradoxically, only a small fraction of ML-based medical decision support systems undergo validation and demonstrate clinical usefulness. To effectively translate all this new knowledge into clinical practice, the development of clinically compliant support systems based on interpretable and explainable ML-based methods and clear analytical strategies for personalized medicine are imperative. Intelligent nephrology, that is, the design and development of AI-based strategies for a data-centric approach to nephrology, is just taking its first steps and is by no means yet close to its coming of age. These first steps are not even homogeneously taken, as a digital divide in access to technology has become evident between developed and developing countries, also affecting underrepresented minorities. With all this in mind, this editorial aim to provide a selective overview of the current use of AI technologies in nephrology and heralds the "Artificial Intelligence in Nephrology" special issue launched by BMC Nephrology.

人工智能如何改变肾脏病学。
目前,肾脏病学的研究越来越侧重于阐明紧密交织的分子系统的内在复杂性及其与病理学和相关治疗(包括透析和肾移植)的关联。omics科学、医疗设备传感器化和网络化数字医疗设备的快速发展使此类研究越来越以数据为中心。以数据为中心的科学需要强大而复杂的计算工具的支持,这些工具能够处理大量的新型生物标记物和治疗目标。在这种情况下,人工智能(AI),更具体地说,机器学习(ML)可以提供明显的分析优势,因为它们在利用多模态数据(从基因组信息到信号、图像,甚至异构电子健康记录(EHR))的能力方面取得了突飞猛进的发展。然而,矛盾的是,只有一小部分基于 ML 的医疗决策支持系统经过了验证并证明了其临床实用性。为了有效地将所有这些新知识转化为临床实践,必须基于可解释和可说明的基于 ML 的方法和明确的个性化医疗分析策略,开发符合临床需求的支持系统。智能肾脏病学,即以数据为中心的肾脏病学人工智能战略的设计和开发,才刚刚迈出第一步,还远远没有进入成熟期。由于发达国家和发展中国家之间在获取技术方面存在明显的数字鸿沟,而且还影响到代表人数不足的少数群体,因此这些第一步甚至都不是同步迈出的。有鉴于此,本社论旨在有选择性地概述目前人工智能技术在肾脏病学中的应用,并预示着 BMC 肾脏病学推出了 "人工智能在肾脏病学中的应用 "特刊。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Nephrology
BMC Nephrology UROLOGY & NEPHROLOGY-
CiteScore
4.30
自引率
0.00%
发文量
375
审稿时长
3-8 weeks
期刊介绍: BMC Nephrology is an open access journal publishing original peer-reviewed research articles in all aspects of the prevention, diagnosis and management of kidney and associated disorders, as well as related molecular genetics, pathophysiology, and epidemiology.
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