Deep Reinforcement Learning for Efficient Digital Pap Smear Analysis

Author:

Macancela Carlos1ORCID,Morocho-Cayamcela Manuel Eugenio1ORCID,Chang Oscar2ORCID

Affiliation:

1. School of Mathematical and Computational Sciences, Yachay Tech University, Ibarra 100115, Ecuador

2. Electronics and Control Department, School of Electrical Engineering, Faculty of Engineering Central University of Venezuela, Los Chaguaramos, Caracas 1050, Venezuela

Abstract

In August 2020, the World Health Assembly launched a global initiative to eliminate cervical cancer by 2030, setting three primary targets. One key goal is to achieve a 70% screening coverage rate for cervical cancer, primarily relying on the precise analysis of Papanicolaou (Pap) or digital Pap smears. However, the responsibility of reviewing Pap smear samples to identify potentially cancerous cells primarily falls on pathologists—a task known to be exceptionally challenging and time-consuming. This paper proposes a solution to address the shortage of pathologists for cervical cancer screening. It leverages the OpenAI-GYM API to create a deep reinforcement learning environment utilizing liquid-based Pap smear images. By employing the Proximal Policy Optimization algorithm, autonomous agents navigate Pap smear images, identifying cells with the aid of rewards, penalties, and accumulated experiences. Furthermore, the use of a pre-trained convolutional neuronal network like Res-Net50 enhances the classification of detected cells based on their potential for malignancy. The ultimate goal of this study is to develop a highly efficient, automated Papanicolaou analysis system, ultimately reducing the need for human intervention in regions with limited pathologists.

Publisher

MDPI AG

Subject

Applied Mathematics,Modeling and Simulation,General Computer Science,Theoretical Computer Science

Reference25 articles.

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3. Nuche-Berenguer, B., and Sakellariou, D. (2019). Socioeconomic determinants of cancer screening utilisation in Latin America: A systematic review. PLoS ONE, 14.

4. Eliminating Cervical Cancer: Progress and Challenges for High-income Countries;Smith;Clin. Oncol.,2021

5. World Health Organization (2023, October 17). Available online: www.who.int/publications/m/item/cervical-cancer-ecu-country-profile-2021.

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