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Differences in cohort study data affect external validation of artificial intelligence models for predictive diagnostics of dementia - lessons for translation into clinical practice

机译:群组研究数据的差异影响人工智能模型的外部验证,以预测痴呆症的预测诊断 - 临床实践中的翻译课程

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Artificial intelligence (AI) approaches pose a great opportunity for individualized, pre-symptomatic disease diagnosis which plays a key role in the context of personalized, predictive, and finally preventive medicine (PPPM). However, to translate PPPM into clinical practice, it is of utmost importance that AI-based models are carefully validated. The validation process comprises several steps, one of which is testing the model on patient-level data from an independent clinical cohort study. However, recruitment criteria can bias statistical analysis of cohort study data and impede model application beyond the training data. To evaluate whether and how data from independent clinical cohort studies differ from each other, this study systematically compares the datasets collected from two major dementia cohorts, namely, the Alzheimer’s Disease Neuroimaging Initiative (ADNI) and AddNeuroMed. The presented comparison was conducted on individual feature level and revealed significant differences among both cohorts. Such systematic deviations can potentially hamper the generalizability of results which were based on a single cohort dataset. Despite identified differences, validation of a previously published, ADNI trained model for prediction of personalized dementia risk scores on 244 AddNeuroMed subjects was successful: External validation resulted in a high prediction performance of above 80% area under receiver operator characteristic curve up to 6 years before dementia diagnosis. Propensity score matching identified a subset of patients from AddNeuroMed, which showed significantly smaller demographic differences to ADNI. For these patients, an even higher prediction performance was achieved, which demonstrates the influence systematic differences between cohorts can have on validation results. In conclusion, this study exposes challenges in external validation of AI models on cohort study data and is one of the rare cases in the neurology field in which such external validation was performed. The presented model represents a proof of concept that reliable models for personalized predictive diagnostics are feasible, which, in turn, could lead to adequate disease prevention and hereby enable the PPPM paradigm in the dementia field.
机译:人工智能(AI)方法为个性化,前症状疾病诊断构成了一个很好的机会,在个性化,预测性和最终预防医学(PPPM)中起着关键作用。但是,要将PPPM转化为临床实践,因此基于AI的模型精心验证至关重要。验证过程包括几个步骤,其中一个步骤正在从独立的临床队列研究中测试患者级数据的模型。但是,招聘标准可以偏向群组研究数据的统计分析,并阻碍模型应用超出培训数据。为了评估来自独立临床队列研究的数据是否彼此不同,这项研究系统地将从两个主要痴呆群组中收集的数据集进行了系统地进行了比较,即阿尔茨海默病神经影像序列(ADNI)和嗜血瘤。所呈现的比较对个体特征水平进行,并在两个群组中揭示了显着差异。这种系统偏差可能会阻碍基于单个队列数据集的结果的普遍性。尽管鉴定了差异,但先前发表的验证,ADNI培训模型用于预测244个胃癌患者的个性化痴呆风险评分的模型成功:外部验证导致高于80%面积的高预测性能,在接收器操作员特征曲线上最多可达6年痴呆症诊断。倾向得分匹配鉴定了胃肠瘤的患者的子集,这表明对ADNI的人口统计差异显着较小。对于这些患者,实现了更高的预测性能,这表明群组之间的系统差异可能具有验证结果。总之,本研究暴露了对群组研究数据的AI模型的外部验证挑战,是这种外部验证的神经病学领域的罕见病例之一。该模型代表了个性化预测诊断的可靠模型是可行的,这反过来可能导致足够的疾病预防,从而使PPPM范例在痴呆症场中。

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