BactPNet:一种新的细菌性肺炎患者自动检测方法

Syed M Iqtidar Shah, Mubashir Ayuub Minhas, Farman Hassan
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引用次数: 0

摘要

每年,全球有大量的人,特别是儿童死于肺炎。据报告,1至5岁儿童中约有120万例肺炎病例。在120万人中,有88万人在2016年死亡。因此,肺炎被认为是儿童死亡的主要原因,特别是在南亚和非洲国家。在发达国家,即英国、美国和其他欧洲国家,它是十大死亡原因之一。然而,在那些发病率高的国家,早期诊断和治疗可以大大减少儿童的死亡率。研究界一直致力于使用传统和基于深度学习(DL)的方法来诊断患者;然而,现有的方法在准确检测患者方面存在各种局限性。因此,为了解决上述问题,我们提出了一种新的基于dl的框架BactPNet,用于检测细菌性肺炎患者。该方法的准确率为91.98%,精密度为90%,召回率为84%,f1得分为86%。以上结果证实了该方法可用于增强胸片对肺炎的诊断。采用BactPNet可以进一步提高治疗质量和正确预测。更具体地说,实验结果和与其他技术的比较评估表明,BactPNet可以更好地检测肺炎患者,可以被医院的医学专家采用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BactPNet: A Novel Automated Detection Approach for Bacterial Pneumonia Patients
Every year, a large number of people around the globe, particularly, children die due to pneumonia disease. Approximately, 1.2 million cases of pneumonia have been reported in children of age ranges from 1 to 5. Out of 1.2 million, 880,000 died in 2016. Therefore, pneumonia is considered a major cause of mortality among children, particularly, in South Asia as well as African countries. It is among the top ten causes of mortality in developed countries, namely, the UK, the USA, and other European countries. However, an early diagnosis and treatment can significantly minimize the death rates among children in those countries that have a high prevalence. The research community has worked to diagnose the patients using traditional and deep learning (DL)-based methods; however, the existing approaches have various limitations in terms of accurate detection of the patients. Therefore, to address the above problem, we have presented a novel DL-based framework, BactPNet, for the detection of bacterial pneumonia patients. Our approach has achieved an accuracy of 91.98%, precision is 90%, recall is 84%, and F1-score is 86%. The above results of our approach confirm that it can be utilized to enhance the diagnosis of pneumonia from the chest x-ray images. By adopting the BactPNet, the quality of treatment and correct prediction can further be improved. More specifically, experimental findings and comparative assessment with other techniques show that BactPNet can better detect pneumonia patients and can be adopted by medical experts in hospitals.
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