与基于深度学习的成像模型并行设计COVID-19诊断的CORI评分。

Narra J Pub Date : 2025-08-01 Epub Date: 2025-05-05 DOI:10.52225/narra.v5i2.1606
Telly Kamelia, Benny Zulkarnaien, Wita Septiyanti, Rahmi Afifi, Adila Krisnadhi, Cleopas M Rumende, Ari Wibisono, Gladhi Guarddin, Dina Chahyati, Reyhan E Yunus, Dhita P Pratama, Irda N Rahmawati, Dewi Nareswari, Maharani Falerisya, Raissa Salsabila, Bagus DI Baruna, Anggraini Iriani, Finny Nandipinto, Ceva Wicaksono, Ivan R Sini
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引用次数: 0

摘要

2019年冠状病毒病(COVID-19)大流行引发了全球卫生危机,给卫生保健系统带来了前所未有的压力,特别是在资源有限的环境中,RT-PCR检测的获取往往受到限制。因此,替代诊断策略至关重要。胸部x光与人工智能(AI)相结合,为检测COVID-19提供了一种很有前途的方法。本研究的目的是开发一种人工智能辅助诊断模型,该模型结合胸部x线图像和临床数据生成COVID-19风险指数(CORI)评分,并实现基于ResNet架构的深度学习模型。2020年4月至2021年7月期间,在印度尼西亚雅加达的三家医院进行了一项多中心队列研究,涉及367名参与者,分为三组:100名COVID-19阳性患者,100名非COVID-19肺炎患者和100名健康个体。临床参数(如发热、咳嗽、血氧饱和度)和实验室结果(如d -二聚体和c -反应蛋白水平)与胸部x线图像一起收集。CORI得分和ResNet模型都使用这个集成数据集进行训练。在内部验证中,ResNet模型达到91%的准确度,94%的灵敏度和92%的特异性。在外部验证中,它正确识别了100例COVID-19病例中的82例。综合影像学、临床和实验室数据得出ROC曲线下的面积为0.98,灵敏度超过95%。CORI评分具有较强的诊断性能,准确率为96.6%,灵敏度为98%,特异性为95.4%,阴性预测值为99.5%,阳性预测值为91.1%。尽管存在局限性,包括回顾性数据收集、医院间差异和有限的外部验证,但基于resnet的人工智能模型和CORI评分显示出作为COVID-19诊断工具的巨大前景,其性能可与印度尼西亚经验丰富的胸科放射科医生相匹敌。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Designing the CORI score for COVID-19 diagnosis in parallel with deep learning-based imaging models.

Designing the CORI score for COVID-19 diagnosis in parallel with deep learning-based imaging models.

Designing the CORI score for COVID-19 diagnosis in parallel with deep learning-based imaging models.

Designing the CORI score for COVID-19 diagnosis in parallel with deep learning-based imaging models.

The coronavirus disease 2019 (COVID-19) pandemic has triggered a global health crisis and placed unprecedented strain on healthcare systems, particularly in resource-limited settings where access to RT-PCR testing is often restricted. Alternative diagnostic strategies are therefore critical. Chest X-rays, when integrated with artificial intelligence (AI), offers a promising approach for COVID-19 detection. The aim of this study was to develop an AI-assisted diagnostic model that combines chest X-ray images and clinical data to generate a COVID-19 Risk Index (CORI) Score and to implement a deep learning model based on ResNet architecture. Between April 2020 and July 2021, a multicenter cohort study was conducted across three hospitals in Jakarta, Indonesia, involving 367 participants categorized into three groups: 100 COVID-19 positive, 100 with non-COVID-19 pneumonia, and 100 healthy individuals. Clinical parameters (e.g., fever, cough, oxygen saturation) and laboratory findings (e.g., D-dimer and C-reactive protein levels) were collected alongside chest X-ray images. Both the CORI Score and the ResNet model were trained using this integrated dataset. During internal validation, the ResNet model achieved 91% accuracy, 94% sensitivity, and 92% specificity. In external validation, it correctly identified 82 of 100 COVID-19 cases. The combined use of imaging, clinical, and laboratory data yielded an area under the ROC curve of 0.98 and a sensitivity exceeding 95%. The CORI Score demonstrated strong diagnostic performance, with 96.6% accuracy, 98% sensitivity, 95.4% specificity, a 99.5% negative predictive value, and a 91.1% positive predictive value. Despite limitations-including retrospective data collection, inter-hospital variability, and limited external validation-the ResNet-based AI model and the CORI Score show substantial promise as diagnostic tools for COVID-19, with performance comparable to that of experienced thoracic radiologists in Indonesia.

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