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International Advanced Research Journal in Science, Engineering and Technology
International Advanced Research Journal in Science, Engineering and Technology A Monthly Peer-Reviewed Multidisciplinary Journal
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← Back to VOLUME 10, ISSUE 4, APRIL 2023

Insights into Cervical Cancer Detection: A Comparative Analysis of performance of various Machine Learning Algorithms

Bhimsingh Bohara, Dr. Pramod Kumar

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Abstract: Cervical Cancer is considered the fourth most common female malignancy worldwide and represents a major global health challenge. As a result, in recent years, various proposals and researches have been conducted. This study aims to analyze the data presented in current researches regarding cervical cancer and contribute to future research, all through the framework of literature review, based on 3 research questions: Q1: What are the risk factors that cause cervical cancer? Q2: What preventive measures are currently established for cervical cancer? and, Q3: What are the techniques to detect cervical cancer? Findings show that detection techniques are complementary since they are categorized under machine learning. Therefore, we recommend that further study be promoted in these techniques as they are helpful in the detection process. In addition, risk factors can be considered for a greater scope in detection, such as HPV infection, since it is the most relevant factor for the development of cervical cancer. Finally, we suggest to conduct further research on preventive measures for cervical cancer.

Keywords: Cervical cancer, Cervical cancer diagnosis, Machine learning.

How to Cite:

[1] Bhimsingh Bohara, Dr. Pramod Kumar, “Insights into Cervical Cancer Detection: A Comparative Analysis of performance of various Machine Learning Algorithms,” International Advanced Research Journal in Science, Engineering and Technology (IARJSET), DOI: 10.17148/IARJSET.2023.10466

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