多路复用
分级(工程)
预测值
生物标志物
诊断准确性
疾病
医学
人工智能
计算机科学
临床疾病
临床诊断
疾病监测
病理
生物标志物发现
认知障碍
机器学习
认知
诊断生物标志物
放射科
临床实习
作者
Yibiao Liu,Zhongzeng Zhou,Xingyun Liu,Jian Zeng,Qiong Liu,Tailin Xu
摘要
Blood-based biomarkers have become increasingly important for Alzheimer's disease (AD) diagnosis. However, due to individual variations, diagnostic accuracy using a single blood biomarker remains low, making it challenging to implement in large-scale AD screening efforts. Herein, we developed a multiplex fluorescent sensing platform for simultaneously measuring Aβ40, Aβ42, and P-tau181 in the blood, and constructed an artificial intelligence (AI) model. These three biomarkers were analyzed in 60 clinical samples: 15 healthy control, 15 subjective cognitive decline, 15 mild cognitive impairment, and 15 AD samples. The AI model based on these three biomarkers exhibited high predictive accuracy (91%), high positive predictive value (PPV) and low false rate (8.8%). The diagnostic accuracy and PPV of the AI model exceeded 90% for AD grading diagnosis in clinical samples. This study introduces a promising strategy for disease diagnosis and grading based on multi-biomarker analysis.
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