Pinned Repositories
calderds.github.io
Calder's Personal Website
COVID-CT
COVID-CT-Dataset: A CT Scan Dataset about COVID-19
documentation
dracula-css
:scream: A dark theme for CSS
dracula_abricotine
image_registration
Python implementation of 2d and 3d image registration
MyoMapNet
We implemented a FC that uses pixel-wise T1-weighted signals and corresponding inversion time to estimate T1 values from a limited number of T1-weighted images. we studied how training the model using native, post-contrast T1 and a combination of both could impact performance of the MyoMapNet. We also explored two choices of number of T1 weighted images of four and five for native T1, selected to allow training of network using existing data from modified Look-Locker sequences (MOLLI). After a rigorous training using in-vivo T1 maps of 607 patients, undergoing clinical cardiac MR exams, collected by MOLLI, the performance of MyoMapNet was evaluated using in-vivo data of 61 patients by discarding the additional T1-weighted images from MOLLI. Subsequently, we implemented LL4 T1 mapping sequence and an inline implementation of MyoMapNet on a 3T Siemens scanner to imaging and inline reconstruction of T1 maps. The inline MyoMapNet was then used to collect LL4 T1 and MOLLI in 16 subjects to demonstrate feasibility of inline MyoMapNet.
persim
Distances and representations of persistence diagrams
pypulseq
Pulseq in Python
documentation
Official Rocky Linux documentation repository.
calderds's Repositories
calderds/image_registration
Python implementation of 2d and 3d image registration
calderds/calderds.github.io
Calder's Personal Website
calderds/COVID-CT
COVID-CT-Dataset: A CT Scan Dataset about COVID-19
calderds/documentation
calderds/dracula-css
:scream: A dark theme for CSS
calderds/dracula_abricotine
calderds/MyoMapNet
We implemented a FC that uses pixel-wise T1-weighted signals and corresponding inversion time to estimate T1 values from a limited number of T1-weighted images. we studied how training the model using native, post-contrast T1 and a combination of both could impact performance of the MyoMapNet. We also explored two choices of number of T1 weighted images of four and five for native T1, selected to allow training of network using existing data from modified Look-Locker sequences (MOLLI). After a rigorous training using in-vivo T1 maps of 607 patients, undergoing clinical cardiac MR exams, collected by MOLLI, the performance of MyoMapNet was evaluated using in-vivo data of 61 patients by discarding the additional T1-weighted images from MOLLI. Subsequently, we implemented LL4 T1 mapping sequence and an inline implementation of MyoMapNet on a 3T Siemens scanner to imaging and inline reconstruction of T1 maps. The inline MyoMapNet was then used to collect LL4 T1 and MOLLI in 16 subjects to demonstrate feasibility of inline MyoMapNet.
calderds/persim
Distances and representations of persistence diagrams
calderds/pypulseq
Pulseq in Python