Medicine and HealthCommunications Biology
Functional and structural reorganization in brain tumors: a machine learning approach using desynchronized functional oscillations
J. Falcó-roget, A. Cacciola, et al.
This groundbreaking study by Joan Falcó-Roget, Alberto Cacciola, Fabio Sambataro, and Alessandro Crimi delves into the fascinating world of brain tumors, unveiling how machine learning can reveal critical changes in brain connectivity. By analyzing fMRI data and developing novel tracking techniques, the researchers uncover significant insights that could revolutionize our understanding of brain function and recovery.
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.
Computer Science
Using the interest theory of rights and Hohfeldian taxonomy to address a gap in machine learning methods for legal document analysis
A. Izzidien
Medicine and Health
A machine learning-based chemoproteomic approach to identify drug targets and binding sites in complex proteomes
I. Piazza, N. Beaton, et al.
Medicine and Health
Predictive model of castration resistance in advanced prostate cancer by machine learning using genetic and clinical data: KYUCOG-1401-A study
M. Shiota, S. Nemoto, et al.

