Advancements in Oncologic Imaging: A Comprehensive Review
Received Date: Sep 02, 2023 / Accepted Date: Sep 29, 2023 / Published Date: Sep 29, 2023
Abstract
Cancer continues to be a major global health challenge, driving continuous efforts to enhance oncologic imaging techniques for improved diagnosis, treatment planning, and monitoring. In this comprehensive review, we explore the significant developments in oncologic imaging over the past decade, highlighting their potential impact on cancer care. Multipara metric imaging has emerged as a powerful approach, combining different modalities to provide a more comprehensive evaluation of tumors. Techniques such as PET/CT and PET/MRI have enabled the fusion of molecular information with anatomical images, leading to enhanced sensitivity and specificity in tumor detection and staging. Radionics and radio genomics, utilizing quantitative imaging features and genetics, have paved the way for personalized medicine, aiding in treatment prediction and individualized therapy selection [1].
Artificial Intelligence (AI) and Machine Learning (ML) have revolutionized oncologic imaging by automating the detection and characterization of tumors. AI algorithms have shown promising results in differentiating malignant from benign lesions, reducing diagnostic uncertainties, and optimizing treatment planning. Moreover, molecular imaging and targeted radiotracers offer non-invasive assessment of tumor biology, aiding in early cancer detection, therapy selection, and response monitoring [2].
Keywords: Cancer; Artificial intelligence; Machine learning; Radionics; Radio genomics
Citation: Larissa L (2023) Advancements in Oncologic Imaging: A Comprehensive Review. J Orthop Oncol 9: 222. Doi: 10.4172/2472-016X.1000222
Copyright: © 2023 Larissa L. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Share This Article
Recommended Journals
天美传媒 Access Journals
Article Tools
Article Usage
- Total views: 529
- [From(publication date): 0-2023 - Jan 10, 2025]
- Breakdown by view type
- HTML page views: 461
- PDF downloads: 68