卷积神经网络
比色法
抗利尿激素分泌不当综合征
激素
抗利尿药
计算机科学
医学
可穿戴计算机
神经科学
内科学
内分泌学
人工智能
心理学
嵌入式系统
计算机视觉
作者
Yuanting Xie,Kaidi Li,Ru Liu,Ying Zhou,Chuangjie Zhang,Yong‐Min Liang,Jianlong Wang,Lei Su,Xueji Zhang
摘要
Abstract Frequent nocturia‐induced nighttime visits aggravate falls in seniors, requiring synthetic antidiuretic drugs that risk the dangerous syndrome of inappropriate antidiuretic hormone secretion (SIADH), thus the detection of sodium ion and uric acid alterations during treatment is obligatory for drug‐safe management. Herein, we design a convolutional neural network (CNN)‐enhanced smart wearable microneedle array‐based colorimetric (WMNC) sensor to independently detect in vivo interstitial fluid (ISF) sodium ions and uric acid alterations. The WMNC sensor is composed of a vacuum tube‐driven microneedle array patch and a built‐in colorimetric sensing paper, enabling an efficient ISF extraction and rapid colorimetric assay. Furthermore, leveraging self‐designed CNNs, the WMNC sensor efficiently eliminates the influence of ambient light on colorimetric outcomes, facilitating a rapid and accurate colorimetric result classification. This study provides an ISF‐based rapid, intuitionistic, user‐friendly, wearable point‐of‐care technique for the elderly suffering from nocturia in monitoring their health status for early warnings of SIADH.
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