Dr. Anand Mohan Jha, Dr. Abikesh Prasada Kumar Mahapatra, Dr. John Abraham, Dr. Somenath Ghosh
{"title":"Artificial Intelligence - A Primer for Diagnosis and Interpretation of Breast Cancer","authors":"Dr. Anand Mohan Jha, Dr. Abikesh Prasada Kumar Mahapatra, Dr. John Abraham, Dr. Somenath Ghosh","doi":"10.22376/ijtos.2024.2.1.27-36","DOIUrl":null,"url":null,"abstract":"Breast Cancer (BC) is a major universal health problem. Early detection and precise diagnosis are vital for enlightening outcomes. Artificial Intelligence (AI) technologies can potentially revolutionize the field of BC by providing quantitative representations of medical images to assist in segmentation, diagnosis, and prognosis. AI can improve image quality, detect and segment breast lesions, classify cancer and predict its behavior, and integrate data from multiple sources to predict clinical outcomes. It can lead to more personalized and effective treatment for BC patients. Challenges faced by AI in real-life solicitations include data curation, model interpretability, and run-through guidelines. However, the clinical implementation of AI is expected to deliver vital guidance for patient-tailored management. BC is a major global health problem; early detection and treatment are crucial for improving outcomes. Imaging detection is a key screening, diagnosis, and treatment effectiveness assessment tool. However, the irresistible number of images creates a heavy capacity for radiologists and delays reporting. AI has the potential to revolutionize BC imaging by improving efficiency and accuracy. AI can recognize, segment, and diagnose tumor lesions automatically and analyze tumor images on a molecular level. It could lead to more personalized treatment strategies. However, AI-assisted imaging diagnosis is still in its early stages of development, and more research is needed to validate its clinical effectiveness. Therefore, AI is a promising new technology that has the potential to progress the diagnosis and treatment of BC, and AI-assisted imaging diagnosis is a promising new technology for improving the early detection and diagnosis of BC. More research is needed to bring this technology to clinical practice.","PeriodicalId":479912,"journal":{"name":"International Journal of Trends in OncoScience","volume":"8 10","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-01-05","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"International Journal of Trends in OncoScience","FirstCategoryId":"0","ListUrlMain":"https://doi.org/10.22376/ijtos.2024.2.1.27-36","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Breast Cancer (BC) is a major universal health problem. Early detection and precise diagnosis are vital for enlightening outcomes. Artificial Intelligence (AI) technologies can potentially revolutionize the field of BC by providing quantitative representations of medical images to assist in segmentation, diagnosis, and prognosis. AI can improve image quality, detect and segment breast lesions, classify cancer and predict its behavior, and integrate data from multiple sources to predict clinical outcomes. It can lead to more personalized and effective treatment for BC patients. Challenges faced by AI in real-life solicitations include data curation, model interpretability, and run-through guidelines. However, the clinical implementation of AI is expected to deliver vital guidance for patient-tailored management. BC is a major global health problem; early detection and treatment are crucial for improving outcomes. Imaging detection is a key screening, diagnosis, and treatment effectiveness assessment tool. However, the irresistible number of images creates a heavy capacity for radiologists and delays reporting. AI has the potential to revolutionize BC imaging by improving efficiency and accuracy. AI can recognize, segment, and diagnose tumor lesions automatically and analyze tumor images on a molecular level. It could lead to more personalized treatment strategies. However, AI-assisted imaging diagnosis is still in its early stages of development, and more research is needed to validate its clinical effectiveness. Therefore, AI is a promising new technology that has the potential to progress the diagnosis and treatment of BC, and AI-assisted imaging diagnosis is a promising new technology for improving the early detection and diagnosis of BC. More research is needed to bring this technology to clinical practice.
乳腺癌(BC)是一个重大的普遍健康问题。早期发现和精确诊断对改善治疗效果至关重要。人工智能(AI)技术可提供医学图像的定量表示,以协助分割、诊断和预后,从而为乳腺癌领域带来潜在的变革。人工智能可以提高图像质量、检测和分割乳腺病变、对癌症进行分类并预测其行为,还能整合多种来源的数据以预测临床结果。它可以为乳腺癌患者提供更加个性化和有效的治疗。人工智能在实际应用中面临的挑战包括数据整理、模型可解释性和运行指南。然而,人工智能的临床应用有望为针对患者的管理提供重要指导。乳腺癌是一个重大的全球性健康问题;早期检测和治疗对改善预后至关重要。成像检测是一种重要的筛查、诊断和治疗效果评估工具。然而,无法抗拒的图像数量给放射科医生带来了沉重的负担,并延误了报告时间。通过提高效率和准确性,人工智能有望彻底改变 BC 成像。人工智能可以自动识别、分割和诊断肿瘤病变,并在分子水平上分析肿瘤图像。它可以带来更加个性化的治疗策略。然而,人工智能辅助影像诊断仍处于早期发展阶段,还需要更多的研究来验证其临床效果。因此,人工智能是一项前景广阔的新技术,有可能推动 BC 的诊断和治疗,而人工智能辅助影像诊断则是一项有望改善 BC 早期检测和诊断的新技术。要将这项技术应用于临床实践,还需要更多的研究。