检索增强医疗诊断系统。

IF 2.5 Q3 BIOCHEMICAL RESEARCH METHODS
Biology Methods and Protocols Pub Date : 2025-02-25 eCollection Date: 2025-01-01 DOI:10.1093/biomethods/bpaf017
Ethan Thomas Johnson, Jathin Koushal Bande, Johnson Thomas
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引用次数: 0

摘要

人类对诊断成像的主观解读存在显著的临床局限性,可能导致诊断错误并增加医疗成本。虽然人工智能(AI)算法为减少口译员的主观性提供了有希望的解决方案,但它们在不同的医疗保健环境中往往表现出较差的通用性。为了解决这些问题,我们引入了检索增强医疗诊断系统(RAMDS),它将人工智能分类模型与类似的图像模型集成在一起。这种方法检索历史病例及其诊断,为人工智能预测提供背景。通过将类似的图像诊断与人工智能预测进行权衡,RAMDS产生最终的加权预测,帮助医生理解诊断过程。此外,RAMDS在应用于新数据集时不需要完全的再训练;相反,它只是需要重新校准称重系统。与ResNet-34相比,RAMDS对乳腺超声诊断的阴性预测值进行微调后,灵敏度提高了21%,阴性预测值提高了9%。RAMDS提供了增强的指标、可解释性和适应性,代表了医疗人工智能的显著进步。RAMDS是医学人工智能中的一种新方法,具有泛病理应用的潜力,但需要进一步研究以优化其性能并整合多模态数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retrieval Augmented Medical Diagnosis System.

Subjective variability in human interpretation of diagnostic imaging presents significant clinical limitations, potentially resulting in diagnostic errors and increased healthcare costs. While artificial intelligence (AI) algorithms offer promising solutions to reduce interpreter subjectivity, they frequently demonstrate poor generalizability across different healthcare settings. To address these issues, we introduce Retrieval Augmented Medical Diagnosis System (RAMDS), which integrates an AI classification model with a similar image model. This approach retrieves historical cases and their diagnoses to provide context for the AI predictions. By weighing similar image diagnoses alongside AI predictions, RAMDS produces a final weighted prediction, aiding physicians in understanding the diagnosis process. Moreover, RAMDS does not require complete retraining when applied to new datasets; rather, it simply necessitates re-calibration of the weighing system. When RAMDS fine-tuned for negative predictive value was evaluated on breast ultrasounds for cancer classification, RAMDS improved sensitivity by 21% and negative predictive value by 9% compared to ResNet-34. Offering enhanced metrics, explainability, and adaptability, RAMDS represents a notable advancement in medical AI. RAMDS is a new approach in medical AI that has the potential for pan-pathological uses, though further research is needed to optimize its performance and integrate multimodal data.

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来源期刊
Biology Methods and Protocols
Biology Methods and Protocols Agricultural and Biological Sciences-Agricultural and Biological Sciences (all)
CiteScore
3.80
自引率
2.80%
发文量
28
审稿时长
19 weeks
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