Deakin University
Browse

Biased deep learning methods in detection of COVID-19 using CT images: a challenge mounted by Subject-Wise-Split ISFCT dataset

Version 3 2024-06-19, 22:55
Version 2 2024-05-31, 02:14
Version 1 2023-12-06, 04:50
journal contribution
posted on 2024-06-19, 22:55 authored by Shiva Parsarad, Narges Saeidizadeh EsfahaniNarges Saeidizadeh Esfahani, Ghazaleh Jamalipour Soufi, Shamim Shafieyoon, Farzaneh Hekmatnia, Andrew Parviz Zarei, Samira Soleimany, Amir Yousefi, Hengameh Nazari, Pegah Torabi, Abbas S. Milani, Seyed Ali Madani Tonekaboni, Hossein Rabbani, Ali Hekmatnia, Rahele Kafieh
Accurate detection of respiratory system damage including COVID-19 is considered one of the crucial applications of deep learning (DL) models using CT images. However, the main shortcoming of the published works has been unreliable reported accuracy and the lack of repeatability with new datasets, mainly due to slice-wise splits of the data, creating dependency between training and test sets due to shared data across the sets. We introduce a new dataset of CT images (ISFCT Dataset) with labels indicating the subject-wise split to train and test our DL algorithms in an unbiased manner. We also use this dataset to validate the real performance of the published works in a subject-wise data split. Another key feature provides more specific labels (eight characteristic lung features) rather than being limited to COVID-19 and healthy labels. We show that the reported high accuracy of the existing models on current slice-wise splits is not repeatable for subject-wise splits, and distribution differences between data splits are demonstrated using t-distribution stochastic neighbor embedding. We indicate that, by examining subject-wise data splitting, less complicated models show competitive results compared to the exiting complicated models, demonstrating that complex models do not necessarily generate accurate and repeatable results.

History

Journal

Journal of Imaging

Volume

9

Pagination

1-14

Location

Basel, Switzerland

ISSN

2313-433X

eISSN

2313-433X

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

8

Publisher

MDPI

Usage metrics

    Research Publications

    Licence

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC