Covid-19 Mortality Risk Prediction Using Small Dataset of Chest X-Ray Images

Akeem Olowolayemo, Wafaa Khazaal Shams, Abubakar Yagoub Ibrahim Omer, Yasin Mohammed, Raashid Salih Batha
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Abstract

COVID-19 outbreak ravaged the whole world starting from the early part of 2020. The rapid spread of the pandemic accounts for the major reason the world was thrown into panic mode and pervasive confusion. However, COVID-19’s greatest strength is its virility but its severity on an individual is mostly ambiguous, which is dependent on the particular individual. This, combined with the increasingly limited capacity of the global healthcare infrastructure warrants some mechanism that can predict the prognosis of an individual to better determine if the patient would require hospital resources or be better treated as an outpatient. The lack of such a mechanism leads to suboptimal utilization of valuable hospital resources leading to unnecessary loss of life. However, often at the onset of a pandemic such as it was experienced during the outbreak of COVID-19, ample and appropriately labelled dataset to build accurate deep learning models to assist in this respect was limited. In this vein, frantic efforts were made to acquire dataset to train deep learning models for the stated objectives, unfortunately only a small dataset from a single source was available at the time of the study. Consequently, deep learning models based on the ResNet-18 architecture were trained on a small dataset of chest X-rays of patients infected with COVID-19 to predict mortality risk. The models exhibit considerable accuracy with high sensitivity. The appropriateness of the techniques proposed in this study for predictive modelling maybe particularly suited when only small datasets are available especially at the onset of similar pandemics. From existing literature, models with low complexity such as ResNet perform better with small dataset. Hence, this study utilised ResNet-18 as the baseline to evaluate the performance of other popular models on small datasets. The performance of the baseline models based on ResNet-18 with an accuracy of 0.89 compared favourably with those of the several other models including AlexNet, MobileNetV3, EfficientNetV2, SwinTransformer, and ConvNeXt using the same datasets and similar parameters.
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基于胸部x线图像小数据集的Covid-19死亡风险预测
新冠肺炎疫情从2020年初开始席卷全球。疫情的迅速蔓延是世界陷入恐慌和普遍混乱的主要原因。然而,COVID-19最大的优势是它的男性性,但其对个人的严重程度大多是模糊的,这取决于特定的个人。这一点,再加上全球医疗保健基础设施的能力日益有限,需要某种机制来预测个人的预后,以更好地确定患者是否需要医院资源或更好地接受门诊治疗。缺乏这样一种机制会导致宝贵的医院资源利用不理想,从而导致不必要的生命损失。然而,通常在COVID-19爆发期间经历的大流行开始时,用于建立准确的深度学习模型以协助这方面的充足和适当标记的数据集是有限的。在这种情况下,人们疯狂地努力获取数据集来训练深度学习模型,以实现所述目标,不幸的是,在研究时,只有来自单一来源的小数据集可用。因此,基于ResNet-18架构的深度学习模型在感染COVID-19患者的胸部x射线小数据集上进行训练,以预测死亡风险。这些模型具有很高的灵敏度和相当的准确性。本研究中提出的预测建模技术的适宜性可能特别适用于只有小数据集可用的情况,特别是在类似流行病开始时。从现有文献来看,ResNet等低复杂度模型在小数据集上表现更好。因此,本研究使用ResNet-18作为基线来评估其他流行模型在小数据集上的性能。与使用相同数据集和相似参数的AlexNet、MobileNetV3、EfficientNetV2、SwinTransformer和ConvNeXt等其他几个模型相比,基于ResNet-18的基线模型的性能精度为0.89。
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