Development of an artificial intelligence-based multimodal diagnostic system for early detection of biliary atresia.

IF 8.3 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL BMC Medicine Pub Date : 2025-02-27 DOI:10.1186/s12916-025-03962-x
Ya Ma, Yuancheng Yang, Yuxin Du, Luyang Jin, Baoyu Liang, Yuqi Zhang, Yedi Wang, Luyu Liu, Zijian Zhang, Zelong Jin, Zhimin Qiu, Mao Ye, Zhengrong Wang, Chao Tong
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Abstract

Background: Early diagnosis of biliary atresia (BA) is crucial for improving patient outcomes, yet remains a significant global challenge. This challenge may be ameliorated through the application of artificial intelligence (AI). Despite the promise of AI in medical diagnostics, its application to multimodal BA data has not yet achieved substantial breakthroughs. This study aims to leverage diverse data sources and formats to develop an intelligent diagnostic system for BA.

Methods: We constructed the largest known multimodal BA dataset, comprising ultrasound images, clinical data, and laboratory results. Using this dataset, we developed a novel deep learning model and simplified it using easily obtainable data, eliminating the need for blood samples. The models were externally validated in a prospective study. We compared the performance of our model with human experts of varying expertise levels and evaluated the AI system's potential to enhance its diagnostic accuracy.

Results: The retrospective study included 1579 participants. The multimodal model achieved an AUC of 0.9870 on the internal test set, outperforming human experts. The simplified model yielded an AUC of 0.9799. In the prospective study's external test set of 171 cases, the multimodal model achieved an AUC of 0.9740, comparable to that of a radiologist with over 10 years of experience (AUC = 0.9766). For less experienced radiologists, the AI-assisted diagnostic AUC improved from 0.6667 to 0.9006.

Conclusions: This AI-based screening application effectively facilitates early diagnosis of BA and serves as a valuable reference for addressing common challenges in rare diseases. The model's high accuracy and its ability to enhance the diagnostic performance of human experts underscore its potential for significant clinical impact.

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开发基于人工智能的多模式诊断系统,用于早期检测胆道闭锁。
背景:胆道闭锁(BA)的早期诊断对于改善患者预后至关重要,但仍然是一个重大的全球挑战。这一挑战可以通过人工智能(AI)的应用得到改善。尽管人工智能在医疗诊断方面前景广阔,但其在多模态BA数据中的应用尚未取得实质性突破。本研究旨在利用不同的数据来源和格式,开发一个BA智能诊断系统。方法:我们构建了已知最大的多模态BA数据集,包括超声图像、临床数据和实验室结果。利用该数据集,我们开发了一种新的深度学习模型,并使用易于获取的数据对其进行了简化,从而消除了对血液样本的需求。这些模型在一项前瞻性研究中进行了外部验证。我们将模型的表现与不同专业水平的人类专家进行了比较,并评估了人工智能系统提高诊断准确性的潜力。结果:回顾性研究纳入1579名受试者。多模态模型在内部测试集上的AUC为0.9870,优于人类专家。简化模型的AUC为0.9799。在前瞻性研究的171例外部测试集中,多模态模型的AUC为0.9740,与具有10年以上经验的放射科医生的AUC = 0.9766相当。对于经验不足的放射科医生,人工智能辅助诊断的AUC从0.6667提高到0.9006。结论:基于人工智能的筛查应用有效促进了BA的早期诊断,为解决罕见病的共同挑战提供了有价值的参考。该模型的高准确性及其提高人类专家诊断性能的能力强调了其具有重大临床影响的潜力。
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来源期刊
BMC Medicine
BMC Medicine 医学-医学:内科
CiteScore
13.10
自引率
1.10%
发文量
435
审稿时长
4-8 weeks
期刊介绍: BMC Medicine is an open access, transparent peer-reviewed general medical journal. It is the flagship journal of the BMC series and publishes outstanding and influential research in various areas including clinical practice, translational medicine, medical and health advances, public health, global health, policy, and general topics of interest to the biomedical and sociomedical professional communities. In addition to research articles, the journal also publishes stimulating debates, reviews, unique forum articles, and concise tutorials. All articles published in BMC Medicine are included in various databases such as Biological Abstracts, BIOSIS, CAS, Citebase, Current contents, DOAJ, Embase, MEDLINE, PubMed, Science Citation Index Expanded, OAIster, SCImago, Scopus, SOCOLAR, and Zetoc.
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