The devastation caused by the coronavirus pandemic makes it imperative to design automated techniques for a fast and accurate detection. We propose a novel non-invasive tool, using deep learning and imaging, for delineating COVID-19 infection in lungs. The Ensembling Attention-based Multi-scaled Convolution network (EAMC), employing Leave-One-Patient-Out (LOPO) training, exhibits high sensitivity and precision in outlining infected regions along with assessment of severity. The Attention module combines contextual with local information, at multiple scales, for accurate segmentation. Ensemble learning integrates heterogeneity of decision through different base classifiers. The superiority of EAMC, even with severe class imbalance, is established through comparison with existing state-of-the-art learning models over four publicly-available COVID-19 datasets. The results are suggestive of the relevance of deep learning in providing assistive intelligence to medical practitioners, when they are overburdened with patients as in pandemics. Its clinical significance lies in its unprecedented scope in providing low-cost decision-making for patients lacking specialized healthcare at remote locations.
翻译:由于冠状病毒大流行造成的破坏,必须设计自动技术,以便进行快速准确的检测。我们建议采用新的非侵入性工具,利用深层次的学习和成像,划定肺部的COVID-19感染情况。聚集关注型多规模革命网络(EAMC),采用“一刀切”培训,在描述受感染地区时表现出高度敏感和精确,并评估其严重程度。注意模块将背景与当地信息结合,在多个尺度上进行准确的分解。整合的学习通过不同的基础分类者将决策的异质融合在一起。即使与严重的阶级不平衡状况相比,EAMC的优越性也是通过与现有最先进的学习模式相比,在四种公开存在的COVID-19数据集之上确定的。研究结果表明,在医疗从业人员与流行病病人过重时,在向他们提供辅助性情报方面进行深层次的学习具有相关性。其临床意义在于为偏远地区缺乏专门保健的病人提供低成本决策的空前范围。