Multi-Slice Net: A Novel Light Weight Framework For COVID-19 Diagnosis

Harshala Gammulle, Tharindu Fernando, S. Sridharan, S. Denman, C. Fookes
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引用次数: 3

Abstract

This paper presents a novel lightweight COVID-19 diagnosis framework using CT scans. Our system utilises a novel two-stage approach to generate robust and efficient diagnoses across heterogeneous patient level inputs. We use a powerful backbone network as a feature extractor to capture discriminative slice-level features. These features are aggregated by a lightweight network to obtain a patient level diagnosis. The aggregation network is carefully designed to have a small number of trainable parameters while also possessing sufficient capacity to generalise to diverse variations within different CT volumes and to adapt to noise introduced during the data acquisition. We achieve a significant performance increase over the baselines when benchmarked on the SPGC COVID-19 Radiomics Dataset, despite having only 2.5 million trainable parameters and requiring only 0.623 seconds on average to process a single patient’s CT volume using an Nvidia-GeForce RTX 2080 GPU.
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多层网络:一种新型的轻量级COVID-19诊断框架
本文提出了一种基于CT扫描的新型轻量级COVID-19诊断框架。我们的系统采用一种新的两阶段方法,在不同的患者水平输入中产生稳健和有效的诊断。我们使用强大的骨干网络作为特征提取器来捕获判别的切片级特征。这些特征通过一个轻量级网络聚合以获得患者级别的诊断。聚合网络经过精心设计,具有少量可训练参数,同时具有足够的能力,可以泛化到不同CT体积内的不同变化,并适应数据采集过程中引入的噪声。尽管只有250万个可训练参数,并且使用Nvidia-GeForce RTX 2080 GPU平均只需要0.623秒来处理单个患者的CT体积,但在SPGC COVID-19放射组学数据集上进行基准测试时,我们实现了比基线显著的性能提升。
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