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首页> 外文期刊>International psychogeriatrics >A clinically-translatable machine learning algorithm for the prediction of Alzheimer's disease conversion: further evidence of its accuracy via a transfer learning approach
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A clinically-translatable machine learning algorithm for the prediction of Alzheimer's disease conversion: further evidence of its accuracy via a transfer learning approach

机译:一种临床翻译机器学习算法,用于预测阿尔茨海默病转换:通过转移学习方法的准确性进一步证明

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Background: In a previous study, we developed a highly performant and clinically-translatable machine learning algorithm for a prediction of three-year conversion to Alzheimer's disease (AD) in subjects with Mild Cognitive Impairment (MCI) and Pre-mild Cognitive Impairment. Further tests are necessary to demonstrate its accuracy when applied to subjects not used in the original training process. In this study, we aimed to provide preliminary evidence of this via a transfer learning approach. Methods: We initially employed the same baseline information (i.e. clinical and neuropsychological test scores, cardiovascular risk indexes, and a visual rating scale for brain atrophy) and the same machine learning technique (support vector machine with radial-basis function kernel) used in our previous study to retrain the algorithm to discriminate between participants with AD (n = 75) and normal cognition (n = 197). Then, the algorithm was applied to perform the original task of predicting the three-year conversion to AD in the sample of 61 MCI subjects that we used in the previous study. Results: Even after the retraining, the algorithm demonstrated a significant predictive performance in the MCI sample (AUC = 0.821, 95% CI bootstrap = 0.705-0.912, best balanced accuracy = 0.779, sensitivity = 0.852, specificity = 0.706). Conclusions: These results provide a first indirect evidence that our original algorithm can also perform relevant generalized predictions when applied to new MCI individuals. This motivates future efforts to bring the algorithm to sufficient levels of optimization and trustworthiness that will allow its application in both clinical and research settings.
机译:背景:在先前的研究中,我们开发了一种高度性能和临床上可翻译的机器学习算法,用于预测具有轻度认知障碍(MCI)和温和认知障碍的受试者的三年转化为Alzheimer疾病(AD)。在应用于原始培训过程中未使用的受试者时,需要进一步测试以证明其准确性。在这项研究中,我们旨在通过转移学习方法提供对此的初步证据。方法:我们最初采用相同的基线信息(即临床和神经心理学测试评分,心血管风险指数,以及脑萎缩的视觉评级规模)以及我们的相同机器学习技术(支持矢量机器)以前的研究以培训算法以区分参与者(n = 75)和正常认知(n = 197)。然后,应用该算法来执行预测我们在前一项研究中使用的61个MCI科目的样本中的三年转换的原始任务。结果:即使在再培训之后,该算法均在MCI样品中显示出显着的预测性能(AUC = 0.821,95%CI左撇子= 0.705-0.912,最佳平衡精度= 0.779,灵敏度= 0.852,特异性= 0.706)。结论:这些结果提供了第一个间接证据,即我们的原始算法在应用于新MCI个体时也可以执行相关的广义预测。这激励了未来的努力将算法带到足够的优化和可信度水平,这将允许其在临床和研究环境中的应用。

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