Deep Learning for Regulatory Genomics - Regulator binding, Transcription Factors TFs
Deep Learning in Life Sciences - Lecture 08 - TF binding (Spring 2021)
MIT 6.874/6.802/20.390/20.490/HST.506 Spring 2021
Prof. Manolis Kellis with Guest lecturer: David Kelley
Deep Learning in the Life Sciences / Computational Systems Biology
Playlist: https://youtube.com/playlist?list=PLypiXJdtIca5sxV7aE3-PS9fYX3vUdIOX
Latest slides and course today: http://compbio.mit.edu/6874
Spring 2021 slides and materials: http://mit6874.github.io/
0:00 Logistics
0:51 Gene regulation
5:13 3D chromatin structure
8:05 Inferring chromosome conformations
19:25 Chromatin organization
26:35 DNA motifs: classical approaches
28:50 DNA motifs: CNNs
36:18 Gene regulation
37:54 DNA convolutional neural network
52:20 Understanding the model
1:02:00 Predicting transcription on large regions
1:15:23 Model performance and applications
1:19:17 Predicting DNA contacts
1:25:10 Summary
Видео Deep Learning for Regulatory Genomics - Regulator binding, Transcription Factors TFs канала Manolis Kellis
MIT 6.874/6.802/20.390/20.490/HST.506 Spring 2021
Prof. Manolis Kellis with Guest lecturer: David Kelley
Deep Learning in the Life Sciences / Computational Systems Biology
Playlist: https://youtube.com/playlist?list=PLypiXJdtIca5sxV7aE3-PS9fYX3vUdIOX
Latest slides and course today: http://compbio.mit.edu/6874
Spring 2021 slides and materials: http://mit6874.github.io/
0:00 Logistics
0:51 Gene regulation
5:13 3D chromatin structure
8:05 Inferring chromosome conformations
19:25 Chromatin organization
26:35 DNA motifs: classical approaches
28:50 DNA motifs: CNNs
36:18 Gene regulation
37:54 DNA convolutional neural network
52:20 Understanding the model
1:02:00 Predicting transcription on large regions
1:15:23 Model performance and applications
1:19:17 Predicting DNA contacts
1:25:10 Summary
Видео Deep Learning for Regulatory Genomics - Regulator binding, Transcription Factors TFs канала Manolis Kellis
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