利用新型 CNN 模型部署移动应用程序,以检测 COVID-19 胸部疾病

IF 2.7 Q2 MULTIDISCIPLINARY SCIENCES Scientific African Pub Date : 2024-10-16 DOI:10.1016/j.sciaf.2024.e02432
Steve Okyere-Gyamfi , Vivian Akoto-Adjepong , Kwabena Adu , Mighty Abra Ayidzoe , Obed Appiah , Peter Appiahene , Patrick Kwabena Mensah , Michael Opoku , Faiza Umar Bawah , Nicodemus Songose Awarayi , Samuel Boateng , Peter Nimbe , Adebayo Felix Adekoya
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引用次数: 0

摘要

2021 年 1 月和 2022 年 1 月,COVID-19 每天分别造成约 13,000 人和 6,000 人死亡。2022 年 8 月,COVID-19 估计每天造成 26,000 人死亡,2024 年 2 月每天造成 13,000 人死亡。及时发现和治疗恶性疾病有可能降低死亡率。然而,使用人工方法诊断这些疾病需要进行细致全面的检查,容易出错,给医护人员带来负担,而且耗费时间。因此,本研究旨在设计和部署一种新型深度学习模型,用于检测 COVID-19 胸部疾病。该模型采用了可训练参数较少的卷积神经网络(CNN)。使用 Android Studio 和 Flutter 在移动设备上部署了该模型,用于检测 COVID-19 胸部疾病。特异性、准确性、精确性、灵敏度、f1 分数、ROC 和 PR 曲线被用来评估模型的性能。此外,还评估了碳足迹以及根据负责任人工智能规则所建议的模型的负责任程度。模型的评估结果显示,总体准确率为 93.27%,特异性为 97.33%,精确度为 93.75%,灵敏度为 94.42%,F1 分数为 94.06%,ROC 率为 98.0%,PR 率为 96.8%。移动应用程序的评估结果表明,COVID-19 数据集具有更高的通用性。此外,代表负责任人工智能的总体 FACETS 分数为 83%,碳足迹(代表模型训练和测试期间向环境排放的碳量)为 416.73 克,等效树月数为 0.45。使用 Android Studio 和 Flutter 部署了这款性能更好、碳足迹更低的应用程序,它可以协助医生诊断 COVID-19 和相关疾病。
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Deployment of mobile application using a novel CNN model for the detection of COVID-19 thoracic disease
In January 2021 and January 2022, COVID-19 caused roughly 13,000 and 6,000 deaths respectively per day. In August 2022, 26,000 deaths per day were estimated to be caused by COVID-19, followed by 13,000 deaths per day in February 2024. The timely identification and treatment of malignant diseases can potentially lower the mortality rate. Nonetheless, the use of manual methods for diagnosing these conditions requires a meticulous and comprehensive examination, making it susceptible to errors, burdensome for healthcare professionals, and time-intensive. Hence, the objective of this study is to design and deploy a novel deep-learning model for the detection of COVID-19 thoracic diseases. A Convolutional Neural Network (CNN) with less trainable parameters was implemented. This proposed model was deployed on a mobile device using Android Studio and Flutter for the detection of COVID-19 thoracic diseases. Specificity, accuracy, precision, sensitivity, f1-score, ROC, and PR curves were used to evaluate the model's performance. Moreover, the carbon footprint as well as how responsible the proposed model is according to Responsible AI rules was also assessed. The model's evaluation results show an overall accuracy of 93.27 %, specificity of 97.33 %, precision of 93.75 %, sensitivity of 94.42 %, F1-Score of 94.06 %, ROC rate of 98.0 %, PR rate of 96.8 %. The evaluation of the mobile application shows higher generalizability on the COVID-19 dataset. Also, the overall FACETS Score representing responsible AI is 83 % and the carbon footprint (representing the amount of carbon emission emitted into the environment during model training and testing) of 416.73 g with equivalent tree months of 0.45 was obtained. This application with better performance and a low carbon footprint was deployed using Android Studio and Flutter and can assist physicians in the diagnosis of COVID-19 and related diseases.
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来源期刊
Scientific African
Scientific African Multidisciplinary-Multidisciplinary
CiteScore
5.60
自引率
3.40%
发文量
332
审稿时长
10 weeks
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