Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis

Extensive research in the field of medical health systems opens prospects for implementing IT systems with the latest innovations. These innovations focus on the efficient use of medical systems, including automated health diagnostics. In healthcare, the focus is on predicting cancer, its various fo...

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Main Author: Moise Hermann Mabouh
Format: Article
Language:Russian
Published: The Fund for Promotion of Internet media, IT education, human development «League Internet Media» 2024-03-01
Series:Современные информационные технологии и IT-образование
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Online Access:https://sitito.cs.msu.ru/index.php/SITITO/article/view/1061
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author Moise Hermann Mabouh
author_facet Moise Hermann Mabouh
author_sort Moise Hermann Mabouh
collection DOAJ
description Extensive research in the field of medical health systems opens prospects for implementing IT systems with the latest innovations. These innovations focus on the efficient use of medical systems, including automated health diagnostics. In healthcare, the focus is on predicting cancer, its various forms and its effects on various organs. Considered difficult to treat, cancer is one of the most aggressive forms, often occurring in advanced stages, making effective treatment difficult. Considering this, medical research is seeking to implement automated systems to determine cancer stages, allowing for more accurate diagnosis and treatment. Deep learning is becoming a key area, expanding into medical imaging, automating diagnostic processes using technologies such as CT/PET systems. Prediction of cancer spread is carried out using threshold parameters as markers. The research direction of this dissertation focuses on the area of medicine covering the prognosis of various forms of cancer. The literature review includes various articles focusing on the application of deep learning in a medical context, with a special focus on breast cancer. Topics discussed include predicting response to chemotherapy in triple-negative breast cancer, automated detection of liver metastases from CT images, assessing response to immunotherapy in lung cancer, and predicting the clinical benefit of adjuvant chemotherapy in hormone receptor-positive breast cancer.
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institution Kabale University
issn 2411-1473
language Russian
publishDate 2024-03-01
publisher The Fund for Promotion of Internet media, IT education, human development «League Internet Media»
record_format Article
series Современные информационные технологии и IT-образование
spelling doaj-art-1dfd1a8b412346259c78ce0a61ab0b6a2025-08-20T03:51:53ZrusThe Fund for Promotion of Internet media, IT education, human development «League Internet Media»Современные информационные технологии и IT-образование2411-14732024-03-0120117518110.25559/SITITO.020.202401.175-181Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and DiagnosisMoise Hermann Mabouh0https://orcid.org/0000-0002-1337-0188Peoples’ Friendship University of Russia named after Patrice Lumumba, Moscow, RussiaExtensive research in the field of medical health systems opens prospects for implementing IT systems with the latest innovations. These innovations focus on the efficient use of medical systems, including automated health diagnostics. In healthcare, the focus is on predicting cancer, its various forms and its effects on various organs. Considered difficult to treat, cancer is one of the most aggressive forms, often occurring in advanced stages, making effective treatment difficult. Considering this, medical research is seeking to implement automated systems to determine cancer stages, allowing for more accurate diagnosis and treatment. Deep learning is becoming a key area, expanding into medical imaging, automating diagnostic processes using technologies such as CT/PET systems. Prediction of cancer spread is carried out using threshold parameters as markers. The research direction of this dissertation focuses on the area of medicine covering the prognosis of various forms of cancer. The literature review includes various articles focusing on the application of deep learning in a medical context, with a special focus on breast cancer. Topics discussed include predicting response to chemotherapy in triple-negative breast cancer, automated detection of liver metastases from CT images, assessing response to immunotherapy in lung cancer, and predicting the clinical benefit of adjuvant chemotherapy in hormone receptor-positive breast cancer.https://sitito.cs.msu.ru/index.php/SITITO/article/view/1061breast cancer screeningdeep convolutional neural networksdeep learningmachine learningmammography
spellingShingle Moise Hermann Mabouh
Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis
Современные информационные технологии и IT-образование
breast cancer screening
deep convolutional neural networks
deep learning
machine learning
mammography
title Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis
title_full Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis
title_fullStr Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis
title_full_unstemmed Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis
title_short Deep Learning Neurons in Medical Insight: Revolutionizing Image Analysis for Disease Prediction and Diagnosis
title_sort deep learning neurons in medical insight revolutionizing image analysis for disease prediction and diagnosis
topic breast cancer screening
deep convolutional neural networks
deep learning
machine learning
mammography
url https://sitito.cs.msu.ru/index.php/SITITO/article/view/1061
work_keys_str_mv AT moisehermannmabouh deeplearningneuronsinmedicalinsightrevolutionizingimageanalysisfordiseasepredictionanddiagnosis