Picture for Tim Hahn

Tim Hahn

pyAKI -- An Open Source Solution to Automated KDIGO classification

Add code
Jan 23, 2024
Viaarxiv icon

GateNet: A novel Neural Network Architecture for Automated Flow Cytometry Gating

Add code
Dec 12, 2023
Viaarxiv icon

DenseNet and Support Vector Machine classifications of major depressive disorder using vertex-wise cortical features

Add code
Nov 18, 2023
Figure 1 for DenseNet and Support Vector Machine classifications of major depressive disorder using vertex-wise cortical features
Figure 2 for DenseNet and Support Vector Machine classifications of major depressive disorder using vertex-wise cortical features
Figure 3 for DenseNet and Support Vector Machine classifications of major depressive disorder using vertex-wise cortical features
Figure 4 for DenseNet and Support Vector Machine classifications of major depressive disorder using vertex-wise cortical features
Viaarxiv icon

Deepbet: Fast brain extraction of T1-weighted MRI using Convolutional Neural Networks

Add code
Aug 14, 2023
Figure 1 for Deepbet: Fast brain extraction of T1-weighted MRI using Convolutional Neural Networks
Figure 2 for Deepbet: Fast brain extraction of T1-weighted MRI using Convolutional Neural Networks
Figure 3 for Deepbet: Fast brain extraction of T1-weighted MRI using Convolutional Neural Networks
Figure 4 for Deepbet: Fast brain extraction of T1-weighted MRI using Convolutional Neural Networks
Viaarxiv icon

From Group-Differences to Single-Subject Probability: Conformal Prediction-based Uncertainty Estimation for Brain-Age Modeling

Add code
Feb 10, 2023
Figure 1 for From Group-Differences to Single-Subject Probability: Conformal Prediction-based Uncertainty Estimation for Brain-Age Modeling
Viaarxiv icon

An Uncertainty-Aware, Shareable and Transparent Neural Network Architecture for Brain-Age Modeling

Add code
Jul 16, 2021
Figure 1 for An Uncertainty-Aware, Shareable and Transparent Neural Network Architecture for Brain-Age Modeling
Figure 2 for An Uncertainty-Aware, Shareable and Transparent Neural Network Architecture for Brain-Age Modeling
Figure 3 for An Uncertainty-Aware, Shareable and Transparent Neural Network Architecture for Brain-Age Modeling
Viaarxiv icon

Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging data using 3D Convolutional Neural Networks

Add code
Mar 22, 2021
Figure 1 for Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging data using 3D Convolutional Neural Networks
Figure 2 for Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging data using 3D Convolutional Neural Networks
Figure 3 for Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging data using 3D Convolutional Neural Networks
Figure 4 for Predicting brain-age from raw T 1 -weighted Magnetic Resonance Imaging data using 3D Convolutional Neural Networks
Viaarxiv icon

The PHOTON Wizard -- Towards Educational Machine Learning Code Generators

Add code
Feb 13, 2020
Figure 1 for The PHOTON Wizard -- Towards Educational Machine Learning Code Generators
Figure 2 for The PHOTON Wizard -- Towards Educational Machine Learning Code Generators
Viaarxiv icon

PHOTON -- A Python API for Rapid Machine Learning Model Development

Add code
Feb 13, 2020
Figure 1 for PHOTON -- A Python API for Rapid Machine Learning Model Development
Figure 2 for PHOTON -- A Python API for Rapid Machine Learning Model Development
Figure 3 for PHOTON -- A Python API for Rapid Machine Learning Model Development
Figure 4 for PHOTON -- A Python API for Rapid Machine Learning Model Development
Viaarxiv icon

Systematic Overestimation of Machine Learning Performance in Neuroimaging Studies of Depression

Add code
Dec 13, 2019
Figure 1 for Systematic Overestimation of Machine Learning Performance in Neuroimaging Studies of Depression
Figure 2 for Systematic Overestimation of Machine Learning Performance in Neuroimaging Studies of Depression
Figure 3 for Systematic Overestimation of Machine Learning Performance in Neuroimaging Studies of Depression
Figure 4 for Systematic Overestimation of Machine Learning Performance in Neuroimaging Studies of Depression
Viaarxiv icon