生物标志物与机器:预测急性肾损伤的竞赛。

IF 7.1 2区 医学 Q1 MEDICAL LABORATORY TECHNOLOGY
Lama Ghazi, Kassem Farhat, Melanie P Hoenig, Thomas J S Durant, Joe M El-Khoury
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引用次数: 0

摘要

背景:急性肾损伤(AKI急性肾损伤(AKI)是一种严重的并发症,影响高达 15%的住院患者。早期诊断对于防止不可逆转的肾损伤至关重要,否则会导致严重的发病率和死亡率。然而,AKI 在临床上是一种无声综合征,目前的检测主要依赖于测量血清肌酐的升高,而血清肌酐是一种不完善的标记物,对发生 AKI 的反应可能很慢。在过去的十年中,生物标记物和人工智能工具的形式出现了新的创新,可帮助早期诊断和预测即将发生的 AKI:本综述总结并批判性评估了利用新兴生物标记物和人工智能检测和预测 AKI 的最新进展。本文讨论的主要指南和研究包括评估替代滤过标志物(如胱抑素 C)和结构损伤标志物(如中性粒细胞明胶酶相关脂褐素和组织金属蛋白酶抑制剂 2 与胰岛素样生长因子结合蛋白 7)的临床应用,以及机器学习算法在成人和儿童 AKI 检测和预测中的应用。摘要:检测 AKI 的竞争正在升温。监管部门批准了部分生物标志物用于临床,机器学习算法的出现也能高精度地预测即将发生的 AKI,这些都是很有希望的发展。但这场竞赛还远未结束。未来的研究需要侧重于临床结果研究,以证明将这些新工具应用于临床实践的实用性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biomarkers vs Machines: The Race to Predict Acute Kidney Injury.

Background: Acute kidney injury (AKI) is a serious complication affecting up to 15% of hospitalized patients. Early diagnosis is critical to prevent irreversible kidney damage that could otherwise lead to significant morbidity and mortality. However, AKI is a clinically silent syndrome, and current detection primarily relies on measuring a rise in serum creatinine, an imperfect marker that can be slow to react to developing AKI. Over the past decade, new innovations have emerged in the form of biomarkers and artificial intelligence tools to aid in the early diagnosis and prediction of imminent AKI.

Content: This review summarizes and critically evaluates the latest developments in AKI detection and prediction by emerging biomarkers and artificial intelligence. Main guidelines and studies discussed herein include those evaluating clinical utilitiy of alternate filtration markers such as cystatin C and structural injury markers such as neutrophil gelatinase-associated lipocalin and tissue inhibitor of metalloprotease 2 with insulin-like growth factor binding protein 7 and machine learning algorithms for the detection and prediction of AKI in adult and pediatric populations. Recommendations for clinical practices considering the adoption of these new tools are also provided.

Summary: The race to detect AKI is heating up. Regulatory approval of select biomarkers for clinical use and the emergence of machine learning algorithms that can predict imminent AKI with high accuracy are all promising developments. But the race is far from being won. Future research focusing on clinical outcome studies that demonstrate the utility and validity of implementing these new tools into clinical practice is needed.

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来源期刊
Clinical chemistry
Clinical chemistry 医学-医学实验技术
CiteScore
11.30
自引率
4.30%
发文量
212
审稿时长
1.7 months
期刊介绍: Clinical Chemistry is a peer-reviewed scientific journal that is the premier publication for the science and practice of clinical laboratory medicine. It was established in 1955 and is associated with the Association for Diagnostics & Laboratory Medicine (ADLM). The journal focuses on laboratory diagnosis and management of patients, and has expanded to include other clinical laboratory disciplines such as genomics, hematology, microbiology, and toxicology. It also publishes articles relevant to clinical specialties including cardiology, endocrinology, gastroenterology, genetics, immunology, infectious diseases, maternal-fetal medicine, neurology, nutrition, oncology, and pediatrics. In addition to original research, editorials, and reviews, Clinical Chemistry features recurring sections such as clinical case studies, perspectives, podcasts, and Q&A articles. It has the highest impact factor among journals of clinical chemistry, laboratory medicine, pathology, analytical chemistry, transfusion medicine, and clinical microbiology. The journal is indexed in databases such as MEDLINE and Web of Science.
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