COVID-19 identification from volumetric chest CT scans using a progressively resized 3D-CNN incorporating segmentation, augmentation, and class-rebalancing
Md. Kamrul Hasan, Md. Tasnim Jawad, Kazi Nasim Imtiaz Hasan, Sajal, Basak Partha, Md. Masum Al Masba, Shumit Saha

TL;DR
This paper presents a 3D CNN approach with progressive resizing, segmentation, augmentation, and class rebalancing for COVID-19 detection from volumetric chest CT scans, achieving high accuracy on public datasets.
Contribution
It introduces a novel 3D CNN framework that leverages progressive resizing and segmentation to improve COVID-19 classification from CT scans, with extensive ablation studies and validation.
Findings
Achieved AUC of 0.914 for binary classification.
Validated effectiveness on the MosMed dataset.
Demonstrated benefits of segmentation and augmentation in model performance.
Abstract
The novel COVID-19 is a global pandemic disease overgrowing worldwide. Computer-aided screening tools with greater sensitivity is imperative for disease diagnosis and prognosis as early as possible. It also can be a helpful tool in triage for testing and clinical supervision of COVID-19 patients. However, designing such an automated tool from non-invasive radiographic images is challenging as many manually annotated datasets are not publicly available yet, which is the essential core requirement of supervised learning schemes. This article proposes a 3D Convolutional Neural Network (CNN)-based classification approach considering both the inter- and intra-slice spatial voxel information. The proposed system is trained in an end-to-end manner on the 3D patches from the whole volumetric CT images to enlarge the number of training samples, performing the ablation studies on patch size…
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