Advancements in Oncology with Artificial Intelligence-A Review Article

Well-trained machine learning (ML) and artificial intelligence (AI) systems can provide clinicians with therapeutic assistance, potentially increasing efficiency and improving efficacy. ML has demonstrated high accuracy in oncology-related diagnostic imaging, including screening mammography interpre...

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Veröffentlicht in:Cancers 2022-03, Vol.14 (5), p.1349
Hauptverfasser: Vobugari, Nikitha, Raja, Vikranth, Sethi, Udhav, Gandhi, Kejal, Raja, Kishore, Surani, Salim R
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container_issue 5
container_start_page 1349
container_title Cancers
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creator Vobugari, Nikitha
Raja, Vikranth
Sethi, Udhav
Gandhi, Kejal
Raja, Kishore
Surani, Salim R
description Well-trained machine learning (ML) and artificial intelligence (AI) systems can provide clinicians with therapeutic assistance, potentially increasing efficiency and improving efficacy. ML has demonstrated high accuracy in oncology-related diagnostic imaging, including screening mammography interpretation, colon polyp detection, glioma classification, and grading. By utilizing ML techniques, the manual steps of detecting and segmenting lesions are greatly reduced. ML-based tumor imaging analysis is independent of the experience level of evaluating physicians, and the results are expected to be more standardized and accurate. One of the biggest challenges is its generalizability worldwide. The current detection and screening methods for colon polyps and breast cancer have a vast amount of data, so they are ideal areas for studying the global standardization of artificial intelligence. Central nervous system cancers are rare and have poor prognoses based on current management standards. ML offers the prospect of unraveling undiscovered features from routinely acquired neuroimaging for improving treatment planning, prognostication, monitoring, and response assessment of CNS tumors such as gliomas. By studying AI in such rare cancer types, standard management methods may be improved by augmenting personalized/precision medicine. This review aims to provide clinicians and medical researchers with a basic understanding of how ML works and its role in oncology, especially in breast cancer, colorectal cancer, and primary and metastatic brain cancer. Understanding AI basics, current achievements, and future challenges are crucial in advancing the use of AI in oncology.
doi_str_mv 10.3390/cancers14051349
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ML offers the prospect of unraveling undiscovered features from routinely acquired neuroimaging for improving treatment planning, prognostication, monitoring, and response assessment of CNS tumors such as gliomas. By studying AI in such rare cancer types, standard management methods may be improved by augmenting personalized/precision medicine. This review aims to provide clinicians and medical researchers with a basic understanding of how ML works and its role in oncology, especially in breast cancer, colorectal cancer, and primary and metastatic brain cancer. 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source PubMed Central Open Access; MDPI - Multidisciplinary Digital Publishing Institute; EZB-FREE-00999 freely available EZB journals; PubMed Central
subjects Algorithms
Artificial intelligence
Back propagation
Brain tumors
Breast cancer
Central nervous system
Classification
Colon cancer
Colorectal cancer
Colorectal carcinoma
Computers
Datasets
Deep learning
Epigenetics
Glioma
Learning algorithms
Lung cancer
Machine learning
Mammography
Medical prognosis
Medical screening
Metastases
Neural networks
Neuroimaging
Oncology
Polyps
Precision medicine
Review
Reviews
Standardization
Tumors
title Advancements in Oncology with Artificial Intelligence-A Review Article
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