Development and Validation of a Deep Learning Model for Histopathological Slide Analysis in Lung Cancer Diagnosis

Author:

Ahmed Alhassan Ali12ORCID,Fawi Muhammad3ORCID,Brychcy Agnieszka4ORCID,Abouzid Mohamed25ORCID,Witt Martin67ORCID,Kaczmarek Elżbieta1

Affiliation:

1. Department of Bioinformatics and Computational Biology, Poznan University of Medical Sciences, 61-806 Poznan, Poland

2. Doctoral School, Poznan University of Medical Sciences, 61-806 Poznan, Poland

3. Spider Silk Security DMCC, Dubai 282945, United Arab Emirates

4. Department of Clinical Patomorphology, Heliodor Swiecicki Clinical Hospital of the Poznan University of Medical Sciences, 61-806 Poznan, Poland

5. Department of Physical Pharmacy and Pharmacokinetics, Poznan University of Medical Sciences, 60-806 Poznan, Poland

6. Department of Anatomy, Poznan University of Medical Sciences, 60-806 Poznan, Poland

7. Department of Anatomy, Technische Universität Dresden, 01307 Dresden, Germany

Abstract

Lung cancer is the leading cause of cancer-related deaths worldwide. Two of the crucial factors contributing to these fatalities are delayed diagnosis and suboptimal prognosis. The rapid advancement of deep learning (DL) approaches provides a significant opportunity for medical imaging techniques to play a pivotal role in the early detection of lung tumors and subsequent monitoring during treatment. This study presents a DL-based model for efficient lung cancer detection using whole-slide images. Our methodology combines convolutional neural networks (CNNs) and separable CNNs with residual blocks, thereby improving classification performance. Our model improves accuracy (96% to 98%) and robustness in distinguishing between cancerous and non-cancerous lung cell images in less than 10 s. Moreover, the model’s overall performance surpassed that of active pathologists, with an accuracy of 100% vs. 79%. There was a significant linear correlation between pathologists’ accuracy and years of experience (r Pearson = 0.71, 95% CI 0.14 to 0.93, p = 0.022). We conclude that this model enhances the accuracy of cancer detection and can be used to train junior pathologists.

Funder

Poznan University of Medical Sciences

Publisher

MDPI AG

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