Abstract

PurposeHigh-dimensional image features that underlie COVID-19 pneumonia remain opaque. We aim to compare feature engineering and deep learning methods to gain insights into the image features that drive CT-based for COVID-19 pneumonia prediction, and uncover CT image features significant for COVID-19 pneumonia from deep learning and radiomics framework.MethodsA total of 266 patients with COVID-19 and other viral pneumonia with clinical symptoms and CT signs similar to that of COVID-19 during the outbreak were retrospectively collected from three hospitals in China and the USA. All the pneumonia lesions on CT images were manually delineated by four radiologists. One hundred eighty-four patients (n = 93 COVID-19 positive; n = 91 COVID-19 negative; 24,216 pneumonia lesions from 12,001 CT image slices) from two hospitals from China served as discovery cohort for model development. Thirty-two patients (17 COVID-19 positive, 15 COVID-19 negative; 7883 pneumonia lesions from 3799 CT image slices) from a US hospital served as external validation cohort. A bi-directional adversarial network-based framework and PyRadiomics package were used to extract deep learning and radiomics features, respectively. Linear and Lasso classifiers were used to develop models predictive of COVID-19 versus non-COVID-19 viral pneumonia.Results120-dimensional deep learning image features and 120-dimensional radiomics features were extracted. Linear and Lasso classifiers identified 32 high-dimensional deep learning image features and 4 radiomics features associated with COVID-19 pneumonia diagnosis (P < 0.0001). Both models achieved sensitivity > 73% and specificity > 75% on external validation cohort with slight superior performance for radiomics Lasso classifier. Human expert diagnostic performance improved (increase by 16.5% and 11.6% in sensitivity and specificity, respectively) when using a combined deep learning-radiomics model.ConclusionsWe uncover specific deep learning and radiomics features to add insight into interpretability of machine learning algorithms and compare deep learning and radiomics models for COVID-19 pneumonia that might serve to augment human diagnostic performance.

Highlights

  • The inclusion criteria of this retrospective study were patients with symptoms suspicious for COVID-19 and diagnosed with COVID-19 or non-COVID-19 viral pneumonia during the COVID-19 outbreak; patients obtained CT chest with or without contrast at time of diagnosis; patients obtained reverse transcriptase chain reaction (RT-PCR) tests to determine COVID-19 status

  • We uncover some of the deep learning and radiomics features that contribute to differentiation of COVID19 from non-COVID-19 viral pneumonia

  • Features extracted from both deep learning and radiomics showed similar performance with linear and least absolute shrinkage and selection operator (Lasso) classifiers, with sensitivity > 73% and specificity > 75% on the external cohort

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Summary

Introduction

The virus nucleic acid real-time reverse transcriptase chain reaction (RT-PCR) test is the current recommended method for COVID-19 diagnosis [2, 3]. With the rapid increase in the number of infections, RT-PCR tests may be fallible depending viral load or sampling techniques and may vary in its availability across global regions. Multiple studies have shown utility for chest CT for diagnosis of COVID-19 [4,5,6], including reports of diagnostic accuracy of chest CT > 80% using deep learning (DL) approaches [7, 8]

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