Medicine and HealthScientific Reports
Discriminating pseudoprogression and true progression in diffuse infiltrating glioma using multi-parametric MRI data through deep learning
J. Lee, N. Wang, et al.
This groundbreaking study reveals a new approach to distinguish between pseudoprogression and true tumor progression in diffuse infiltrating gliomas using a CNN-LSTM deep learning model and multiparametric MRI data. Conducted by leading experts at the University of Michigan, these findings pave the way for improved diagnostic performance and timely treatment decisions.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Medicine and Health
Recent Advancements and Perspectives in the Diagnosis of Skin Diseases Using Machine Learning and Deep Learning: A Review
J. Zhang, F. Zhong, et al.
Engineering and Technology
Gas permeability, diffusivity, and solubility in polymers: Simulation-experiment data fusion and multi-task machine learning
B. K. Phan, K. Shen, et al.
Engineering and Technology
Improved Fault Classification and Localization in Power Transmission Networks Using VAE-Generated Synthetic Data and Machine Learning Algorithms
M. A. Khan, B. Asad, et al.
Environmental Studies and Forestry
Addressing gaps in data on drinking water quality through data integration and machine learning: evidence from Ethiopia
A. A. Ambel, R. Bain, et al.

