Medicine and HealthNature Communications
Opportunistic detection of type 2 diabetes using deep learning from frontal chest radiographs
A. Pyrros, S. M. Borstelmann, et al.
Discover how a deep learning model, developed by a team of expert researchers, including Ayis Pyrros and Stephen M. Borstelmann, is transforming diabetes screening by analyzing chest radiographs and electronic health records. With an impressive ROC AUC of 0.84, this innovative approach could redefine type 2 diabetes detection and enhance patient outcomes.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
Medicine and Health
Automated detection of type 1 ROP, type 2 ROP and A-ROP based on deep learning
E. K. Yenice, C. Kara, et al.
Medicine and Health
Design and Analysis of a Deep Learning Ensemble Framework Model for the Detection of COVID-19 and Pneumonia Using Large-Scale CT Scan and X-ray Image Datasets
X. Xue, S. Chinnaperumal, et al.
Engineering and Technology
Unlocking the potential: analyzing 3D microstructure of small-scale cement samples from space using deep learning
V. Saseendran, N. Yamamoto, et al.
Medicine and Health
Identification and epidemiological characterization of Type-2 diabetes sub-population using an unsupervised machine learning approach
S. Bej, J. Sarkar, et al.

