Artificial intelligence and allied subsets in early detection and preclusion of gynecological cancers

Gynecological cancers including breast, cervical, ovarian, uterine, and vaginal, pose the greatest threat to world health, with early identification being crucial to patient outcomes and survival rates. The application of machine learning (ML) and artificial intelligence (AI) approaches to the study...

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Veröffentlicht in:Biochimica et biophysica acta. Reviews on cancer 2023-11, Vol.1878 (6), p.189026-189026, Article 189026
Hauptverfasser: Garg, Pankaj, Mohanty, Atish, Ramisetty, Sravani, Kulkarni, Prakash, Horne, David, Pisick, Evan, Salgia, Ravi, Singhal, Sharad S.
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container_end_page 189026
container_issue 6
container_start_page 189026
container_title Biochimica et biophysica acta. Reviews on cancer
container_volume 1878
creator Garg, Pankaj
Mohanty, Atish
Ramisetty, Sravani
Kulkarni, Prakash
Horne, David
Pisick, Evan
Salgia, Ravi
Singhal, Sharad S.
description Gynecological cancers including breast, cervical, ovarian, uterine, and vaginal, pose the greatest threat to world health, with early identification being crucial to patient outcomes and survival rates. The application of machine learning (ML) and artificial intelligence (AI) approaches to the study of gynecological cancer has shown potential to revolutionize cancer detection and diagnosis. The current review outlines the significant advancements, obstacles, and prospects brought about by AI and ML technologies in the timely identification and accurate diagnosis of different types of gynecological cancers. The AI-powered technologies can use genomic data to discover genetic alterations and biomarkers linked to a particular form of gynecologic cancer, assisting in the creation of targeted treatments. Furthermore, it has been shown that the potential benefits of AI and ML technologies in gynecologic tumors can greatly increase the accuracy and efficacy of cancer diagnosis, reduce diagnostic delays, and possibly eliminate the need for needless invasive operations. In conclusion, the review focused on the integrative part of AI and ML based tools and techniques in the early detection and exclusion of various cancer types; together with a collaborative coordination between research clinicians, data scientists, and regulatory authorities, which is suggested to realize the full potential of AI and ML in gynecologic cancer care. •The salient features of this review article with potential clinical relevance include:•Using AI and ML algorithms, tumor volume, shape, and size can be reliably quantified.•Three key biological functions- screening, classification, and monitoring of tumors can be improved with radio-genomics.•AI and ML can aid in image-guided interventions, such as tumor biopsies and surgeries.•AI and ML provide a wider variety of tools that have shown great potential for cancer imaging in the early detection and preclusion of cancers.•AI, ML, and DL approaches can analyze genomic and proteomic data to identify specific biomarkers associated with cancers.
doi_str_mv 10.1016/j.bbcan.2023.189026
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subjects Artificial Intelligence
Artificial Intelligence & Machine Learning
Breast
Cancer prognosis & preclusion
Deep-learning algorithm models
Female
Genital Neoplasms, Female - diagnosis
Genital Neoplasms, Female - genetics
Genomics
Gynecological cancers
Humans
Machine Learning
title Artificial intelligence and allied subsets in early detection and preclusion of gynecological cancers
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