Abstract

Simple SummaryPapillary thyroid carcinoma is the most common type of thyroid cancer and could be cured if diagnosed and treated early. In clinical practice, the primary method for determining diagnosis of papillary thyroid carcinoma is manual visual inspection of cytopathology slides, which is difficult, time consuming and subjective with a high inter-observer variability and sometimes causes suboptimal patient management due to false-positive and false-negative results. This study presents a fast, fully automatic and efficient deep learning framework for fast screening of cytological slides for thyroid cancer diagnosis. We confirmed the robustness and effectiveness of the proposed method based on evaluation results from two different types of slides: thyroid fine needle aspiration smears and ThinPrep slides.Thyroid cancer is the most common cancer in the endocrine system, and papillary thyroid carcinoma (PTC) is the most prevalent type of thyroid cancer, accounting for 70 to 80% of all thyroid cancer cases. In clinical practice, visual inspection of cytopathological slides is an essential initial method used by the pathologist to diagnose PTC. Manual visual assessment of the whole slide images is difficult, time consuming, and subjective, with a high inter-observer variability, which can sometimes lead to suboptimal patient management due to false-positive and false-negative. In this study, we present a fully automatic, efficient, and fast deep learning framework for fast screening of papanicolaou-stained thyroid fine needle aspiration (FNA) and ThinPrep (TP) cytological slides. To the authors’ best of knowledge, this work is the first study to build an automated deep learning framework for identification of PTC from both FNA and TP slides. The proposed deep learning framework is evaluated on a dataset of 131 WSIs, and the results show that the proposed method achieves an accuracy of 99%, precision of 85%, recall of 94% and F1-score of 87% in segmentation of PTC in FNA slides and an accuracy of 99%, precision of 97%, recall of 98%, F1-score of 98%, and Jaccard-Index of 96% in TP slides. In addition, the proposed method significantly outperforms the two state-of-the-art deep learning methods, i.e., U-Net and SegNet, in terms of accuracy, recall, F1-score, and Jaccard-Index (). Furthermore, for run-time analysis, the proposed fast screening method takes 0.4 min to process a WSI and is 7.8 times faster than U-Net and 9.1 times faster than SegNet, respectively.

Highlights

  • Thyroid cancer is the most prevalent cancer in the endocrine system and accounts for the majority of head and neck cancer cases [1]

  • Sanyal et al.’s method [24] obtains the diagnostic accuracy of 85.06% on microphotographs of size 512 × 512 pixels from thyroid fine needle aspiration cytology (FNAC) while the proposed method achieves an accuracy of 99% on gigapixels whole slide images (WSIs) of papanicolaou-stained thyroid fine needle aspiration (FNA) and ThinPrep (TP) cytological slides for detection and segmentation of Papillary thyroid carcinoma (PTC)

  • The aim of this study is to develop a deep learning framework that can automatically detect PTC from both papanicolaou-stained thyroid FNA and TP cytological slides

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Summary

Introduction

Thyroid cancer is the most prevalent cancer in the endocrine system and accounts for the majority of head and neck cancer cases [1]. In evaluation, as this is the first study on automatic segmentation of PTC in papanicolaou-stained thyroid FNA and TP cytological slides, we compare the proposed method with the two state-of-the-art deep learning models, including U-Net [27] and SegNet [28]

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