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人工智能在非洲结核病治疗用药依从性监测中的应用:算法开发与验证

Application of Artificial Intelligence to the Monitoring of Medication Adherence for Tuberculosis Treatment in Africa: Algorithm Development and Validation.

作者信息

Sekandi Juliet Nabbuye, Shi Weili, Zhu Ronghang, Kaggwa Patrick, Mwebaze Ernest, Li Sheng

机构信息

Department of Epidemiology and Biostatistics, College of Public Health, University of Georgia, Athens, GA, United States.

Global Health Institute, College of Public Health, University of Georgia, Athens, GA, United States.

出版信息

JMIR AI. 2023 Jan-Dec;2(1):e40167. doi: 10.2196/40167. Epub 2023 Feb 23.

Abstract

BACKGROUND

Artificial intelligence (AI) applications based on advanced deep learning methods in image recognition tasks can increase efficiency in the monitoring of medication adherence through automation. AI has sparsely been evaluated for the monitoring of medication adherence in clinical settings. However, AI has the potential to transform the way health care is delivered even in limited-resource settings such as Africa.

OBJECTIVE

We aimed to pilot the development of a deep learning model for simple binary classification and confirmation of proper medication adherence to enhance efficiency in the use of video monitoring of patients in tuberculosis treatment.

METHODS

We used a secondary data set of 861 video images of medication intake that were collected from consenting adult patients with tuberculosis in an institutional review board-approved study evaluating video-observed therapy in Uganda. The video images were processed through a series of steps to prepare them for use in a training model. First, we annotated videos using a specific protocol to eliminate those with poor quality. After the initial annotation step, 497 videos had sufficient quality for training the models. Among them, 405 were positive samples, whereas 92 were negative samples. With some preprocessing techniques, we obtained 160 frames with a size of 224 × 224 in each video. We used a deep learning framework that leveraged 4 convolutional neural networks models to extract visual features from the video frames and automatically perform binary classification of adherence or nonadherence. We evaluated the diagnostic properties of the different models using sensitivity, specificity, -score, and precision. The area under the curve (AUC) was used to assess the discriminative performance and the speed per video review as a metric for model efficiency. We conducted a 5-fold internal cross-validation to determine the diagnostic and discriminative performance of the models. We did not conduct external validation due to a lack of publicly available data sets with specific medication intake video frames.

RESULTS

Diagnostic properties and discriminative performance from internal cross-validation were moderate to high in the binary classification tasks with 4 selected automated deep learning models. The sensitivity ranged from 92.8 to 95.8%, specificity from 43.5 to 55.4%, -score from 0.91 to 0.92, precision from 88% to 90.1%, and AUC from 0.78 to 0.85. The 3D ResNet model had the highest precision, AUC, and speed.

CONCLUSIONS

All 4 deep learning models showed comparable diagnostic properties and discriminative performance. The findings serve as a reasonable proof of concept to support the potential application of AI in the binary classification of video frames to predict medication adherence.

摘要

背景

基于先进深度学习方法的人工智能(AI)应用于图像识别任务,可通过自动化提高药物依从性监测的效率。在临床环境中,针对药物依从性监测对AI进行的评估较少。然而,即使在非洲等资源有限的环境中,AI也有潜力改变医疗保健的提供方式。

目的

我们旨在试点开发一种深度学习模型,用于简单的二元分类并确认正确的药物依从性,以提高结核病治疗中患者视频监测的使用效率。

方法

我们使用了一个包含861个药物摄入视频图像的二级数据集,这些图像是在乌干达一项经机构审查委员会批准的评估视频观察治疗的研究中,从同意参与的成年结核病患者那里收集的。视频图像经过一系列步骤进行处理,以便用于训练模型。首先,我们使用特定协议对视频进行注释,以消除质量较差的视频。在初始注释步骤之后,有497个视频质量足以用于训练模型。其中,405个是阳性样本,而92个是阴性样本。通过一些预处理技术,我们在每个视频中获得了160个大小为224×224的帧。我们使用了一个深度学习框架,该框架利用4个卷积神经网络模型从视频帧中提取视觉特征,并自动对依从性或不依从性进行二元分类。我们使用灵敏度﹑特异性、F1分数和精确度来评估不同模型的诊断特性。曲线下面积(AUC)用于评估判别性能,每个视频审查的速度作为模型效率的指标。我们进行了5折内部交叉验证,以确定模型的诊断和判别性能。由于缺乏带有特定药物摄入视频帧的公开可用数据集,我们未进行外部验证。

结果

在使用4个选定的自动化深度学习模型进行的二元分类任务中,内部交叉验证的诊断特性和判别性能为中等至高。灵敏度范围为92.8%至95.8%,特异性范围为43.5%至55.4%,F1分数范围为0.91至0.92,精确度范围为88%至90.1%,AUC范围为0.78至0.85。3D ResNet模型具有最高的精确度、AUC和速度。

结论

所有4个深度学习模型均显示出可比的诊断特性和判别性能。这些发现为支持AI在视频帧二元分类中预测药物依从性的潜在应用提供了合理的概念验证。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/661b/11334376/e336a5fcefb2/ai_v2i1e40167_fig1.jpg

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