Yamagami Junkichi
In this database
5
2018 – 2021
DB Citations
285
across indexed articles
h-index
—
Not available
Total Citations
—
Not available
5 articles in Glaucoma Journal Club
Using Deep Learning and Transfer Learning to Accurately Diagnose Early-Onset Glaucoma From Macular Optical Coherence Tomography Images.
A DL model for glaucoma using spectral-domain OCT offers a substantive increase in diagnostic performance.
Predicting the Glaucomatous Central 10-Degree Visual Field From Optical Coherence Tomography Using Deep Learning and Tensor Regression.
The Humphrey 10-2 VF can be predicted from OCT-measured retinal layer thicknesses using deep learning and tensor regression.
Predicting 10-2 Visual Field From Optical Coherence Tomography in Glaucoma Using Deep Learning Corrected With 24-2/30-2 Visual Field.
The performance of a DL model to predict 10-2 VF from macular OCT was improved by the correction with HFA 24-2/30-2.
Comparing Structure-Function Relationships Based on Drasdo's and Sjöstrand's Retinal Ganglion Cell Displacement Models.
Structure-function relationships evaluated based on both the Drasdo and Sjöstrand models significantly improved around the fovea, particularly when using the Drasdo model. This was not the case in other areas.
Mapping the Central 10° Visual Field to the Optic Nerve Head Using the Structure-Function Relationship.
The structure-function map obtained largely confirms the previously reported map; however, some important differences were observed.