Deep Learning for Soft Tissue Sarcoma Management

June 25, 2024 12:35 AM AEST | By EIN Presswire
 Deep Learning for Soft Tissue Sarcoma Management
Image source: EIN Presswire

USA, June 24, 2024 /EINPresswire.com/ -- A comprehensive review from The Second Xiangya Hospital of Central South University outlines how deep learning is transforming the diagnosis, treatment, and prognosis of soft tissue sarcomas, offering new hope for patients.

Soft tissue sarcomas (STSs) represent a diverse group of tumors that pose significant diagnostic and therapeutic challenges. In a recent review (https://doi.org/10.1016/j.metrad.2024.100069) published in the KeAi journal Meta-Radiology, a team of researchers from The Second Xiangya Hospital at Central South University in Changsha, China, explored the potential application of deep learning (DL) in revolutionizing the management of these complex tumors.

"Deep learning has shown remarkable promise in various medical fields, and its application in STSs is no exception. Our review has synthesized the most recent advancements and highlighted how deep learning can improve the accuracy of diagnosis, personalize treatment plans, and predict patient outcomes more effectively and efficiently,” shares Zhihong Li, senior and co-corresponding author of the study.

The review covers several key areas where deep learning is making an impact:

1. Data Acquisition and Processing: The integration of multi-modal data, including radiographic images and histopathological slides, enhances the diagnostic process.
2. Algorithm Development: Advanced deep learning models such as convolutional neural networks (CNNs) and generative adversarial networks (GANs) have been developed to improve image analysis and data augmentation.
3. Clinical Applications: Deep learning models have been successfully used to automate the contouring of gross tumor volumes (GTVs) for radiation therapy, predict treatment responses, and stratify patients based on risk.
4. Pathological Diagnosis: Automation of diagnostic systems using deep learning algorithms can assist pathologists in accurately classifying STS subtypes and identifying prognostic biomarkers.

Prof. Chao Tu, who led the study alongside Li, emphasized the importance of high-quality data and optimized algorithms. "The success of deep learning in clinical applications depends heavily on the quality of the input data and the robustness of the algorithms. Our review has underscored the need for well-annotated datasets and continuous algorithm refinement."

This research was supported by several grants, including the National Natural Foundation of China and the Hunan Provincial Natural Science Foundation. The authors hope that their review will encourage further research and the adoption of deep learning technologies in clinical practice, ultimately improving outcomes for patients with soft tissue sarcomas.

DOI
10.1016/j.metrad.2024.100069

Original Source URL
https://doi.org/10.1016/j.metrad.2024.100069

Funding information
This work was supported by the National Natural Foundation of China (82272664, 81902745), Hunan Provincial Natural Science Foundation of China (2022JJ30843), and the Science and Technology Innovation Program of Hunan Province (2023RC3085).

Lucy Wang
BioDesign Research
email us here


Disclaimer

The content, including but not limited to any articles, news, quotes, information, data, text, reports, ratings, opinions, images, photos, graphics, graphs, charts, animations and video (Content) is a service of Kalkine Media Pty Ltd (“Kalkine Media, we or us”), ACN 629 651 672 and is available for personal and non-commercial use only. The principal purpose of the Content is to educate and inform. The Content does not contain or imply any recommendation or opinion intended to influence your financial decisions and must not be relied upon by you as such. Some of the Content on this website may be sponsored/non-sponsored, as applicable, but is NOT a solicitation or recommendation to buy, sell or hold the stocks of the company(s) or engage in any investment activity under discussion. Kalkine Media is neither licensed nor qualified to provide investment advice through this platform. Users should make their own enquiries about any investments and Kalkine Media strongly suggests the users to seek advice from a financial adviser, stockbroker or other professional (including taxation and legal advice), as necessary.
The content published on Kalkine Media also includes feeds sourced from third-party providers. Kalkine does not assert any ownership rights over the content provided by these third-party sources. The inclusion of such feeds on the Website is for informational purposes only. Kalkine does not guarantee the accuracy, completeness, or reliability of the content obtained from third-party feeds. Furthermore, Kalkine Media shall not be held liable for any errors, omissions, or inaccuracies in the content obtained from third-party feeds, nor for any damages or losses arising from the use of such content.
Kalkine Media hereby disclaims any and all the liabilities to any user for any direct, indirect, implied, punitive, special, incidental or other consequential damages arising from any use of the Content on this website, which is provided without warranties. The views expressed in the Content by the guests, if any, are their own and do not necessarily represent the views or opinions of Kalkine Media. Some of the images/music that may be used on this website are copyrighted to their respective owner(s). Kalkine Media does not claim ownership of any of the pictures displayed/music used on this website unless stated otherwise. The images/music that may be used on this website are taken from various sources on the internet, including paid subscriptions or are believed to be in public domain. We have made reasonable efforts to accredit the source wherever it was indicated as or found to be necessary.
This disclaimer is subject to change without notice. Users are advised to review this disclaimer periodically for any updates or modifications.


AU_advertise

Advertise your brand on Kalkine Media

Sponsored Articles


Investing Ideas

Previous Next
We use cookies to ensure that we give you the best experience on our website. If you continue to use this site we will assume that you are happy with it.