Clinical applications of artificial intelligence in identification and management of bacterial infection: Systematic review and meta-analysis

IF 4.4 2区 生物学 Q1 Agricultural and Biological Sciences Saudi Journal of Biological Sciences Pub Date : 2024-01-14 DOI:10.1016/j.sjbs.2024.103934
Mohammad Zubair
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Abstract

Pneumonia is declared a global emergency public health crisis in children less than five age and the geriatric population. Recent advancements in deep learning models could be utilized effectively for the timely and early diagnosis of pneumonia in immune-compromised patients to avoid complications. This systematic review and meta-analysis utilized PRISMA guidelines for the selection of ten articles included in this study. The literature search was done through electronic databases including PubMed, Scopus, and Google Scholar from 1st January 2016 till 1 July 2023. Overall studies included a total of 126,610 images and 1706 patients in this meta-analysis. At a 95% confidence interval, for pooled sensitivity was 0.90 (0.85–0.94) and I2 statistics 90.20 (88.56 – 91.92). The pooled specificity for deep learning models' diagnostic accuracy was 0.89 (0.86–––0.92) and I2 statistics 92.72 (91.50 – 94.83). I2 statistics showed low heterogeneity across studies highlighting consistent and reliable estimates, and instilling confidence in these findings for researchers and healthcare practitioners. The study highlighted the recent deep learning models single or in combination with high accuracy, sensitivity, and specificity to ensure reliable use for bacterial pneumonia identification and differentiate from other viral, fungal pneumonia in children and adults through chest x-rays and radiographs.

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人工智能在细菌感染识别和管理中的临床应用:系统回顾与荟萃分析
肺炎已被宣布为五岁以下儿童和老年人群的全球性紧急公共卫生危机。深度学习模型的最新进展可有效用于免疫力低下患者肺炎的及时和早期诊断,以避免并发症。本系统综述和荟萃分析采用了 PRISMA 指南,选择了 10 篇文章纳入本研究。从 2016 年 1 月 1 日至 2023 年 7 月 1 日,通过 PubMed、Scopus 和 Google Scholar 等电子数据库进行了文献检索。本荟萃分析共纳入了 126610 张图片和 1706 名患者。在 95% 的置信区间内,汇总灵敏度为 0.90(0.85-0.94),I2 统计量为 90.20(88.56 - 91.92)。深度学习模型诊断准确性的集合特异性为 0.89(0.86 - 0.92),I2 统计量为 92.72(91.50 - 94.83)。I2统计显示,各研究之间的异质性较低,突出了一致、可靠的估计结果,为研究人员和医疗从业人员带来了信心。该研究强调,最近的深度学习模型可单独或组合使用,具有高准确性、灵敏度和特异性,可确保可靠地用于细菌性肺炎的鉴别,并通过胸部 X 光片和射线照片将儿童和成人肺炎与其他病毒性、真菌性肺炎区分开来。
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
CiteScore
9.30
自引率
4.50%
发文量
551
审稿时长
34 days
期刊介绍: Saudi Journal of Biological Sciences is an English language, peer-reviewed scholarly publication in the area of biological sciences. Saudi Journal of Biological Sciences publishes original papers, reviews and short communications on, but not limited to: • Biology, Ecology and Ecosystems, Environmental and Biodiversity • Conservation • Microbiology • Physiology • Genetics and Epidemiology Saudi Journal of Biological Sciences is the official publication of the Saudi Society for Biological Sciences and is published by King Saud University in collaboration with Elsevier and is edited by an international group of eminent researchers.
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