A pilot evaluation of the diagnostic accuracy of ChatGPT-3.5 for multiple sclerosis from case reports.

IF 1.8 4区 医学 Q4 NEUROSCIENCES Translational Neuroscience Pub Date : 2024-12-24 eCollection Date: 2024-01-01 DOI:10.1515/tnsci-2022-0361
Anika Joseph, Kevin Joseph, Angelyn Joseph
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Abstract

The limitation of artificial intelligence (AI) large language models to diagnose diseases from the perspective of patient safety remains underexplored and potential challenges, such as diagnostic errors and legal challenges, need to be addressed. To demonstrate the limitations of AI, we used ChatGPT-3.5 developed by OpenAI, as a tool for medical diagnosis using text-based case reports of multiple sclerosis (MS), which was selected as a prototypic disease. We analyzed 98 peer-reviewed case reports selected based on free-full text availability and published within the past decade (2014-2024), excluding any mention of an MS diagnosis to avoid bias. ChatGPT-3.5 was used to interpret clinical presentations and laboratory data from these reports. The model correctly diagnosed MS in 77 cases, achieving an accuracy rate of 78.6%. However, the remaining 21 cases were misdiagnosed, highlighting the model's limitations. Factors contributing to the errors include variability in data presentation and the inherent complexity of MS diagnosis, which requires imaging modalities in addition to clinical presentations and laboratory data. While these findings suggest that AI can support disease diagnosis and healthcare providers in decision-making, inadequate training with large datasets may lead to significant inaccuracies. Integrating AI into clinical practice necessitates rigorous validation and robust regulatory frameworks to ensure responsible use.

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从病例报告中初步评估ChatGPT-3.5对多发性硬化症的诊断准确性。
人工智能(AI)大型语言模型从患者安全的角度诊断疾病的局限性仍未得到充分探索,需要解决诊断错误和法律挑战等潜在挑战。为了证明人工智能的局限性,我们使用OpenAI开发的ChatGPT-3.5作为基于文本的多发性硬化症(MS)病例报告的医学诊断工具,该疾病被选为原型疾病。我们分析了98份同行评议的病例报告,这些报告是基于过去十年(2014-2024)发表的免费全文,排除了任何提及多发性硬化症诊断以避免偏倚。ChatGPT-3.5用于解释这些报告的临床表现和实验室数据。模型正确诊断MS 77例,准确率达78.6%。然而,其余21例被误诊,突出了该模型的局限性。导致错误的因素包括数据呈现的可变性和MS诊断的固有复杂性,除了临床表现和实验室数据外,还需要成像方式。虽然这些发现表明人工智能可以支持疾病诊断和医疗保健提供者的决策,但大型数据集培训不足可能会导致严重的不准确性。将人工智能纳入临床实践需要严格的验证和健全的监管框架,以确保负责任的使用。
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来源期刊
CiteScore
3.00
自引率
4.80%
发文量
45
审稿时长
>12 weeks
期刊介绍: Translational Neuroscience provides a closer interaction between basic and clinical neuroscientists to expand understanding of brain structure, function and disease, and translate this knowledge into clinical applications and novel therapies of nervous system disorders.
期刊最新文献
Analysis of gradual diameter thrombectomy stent in vitro. A pilot evaluation of the diagnostic accuracy of ChatGPT-3.5 for multiple sclerosis from case reports. Corrigendum to "Tongxinluo promotes axonal plasticity and functional recovery after stroke". Disgust sensitivity and psychopathic behavior: A narrative review. The hidden link: Investigating functional connectivity of rarely explored sub-regions of thalamus and superior temporal gyrus in Schizophrenia.
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