Alex Baras (@alexander_baras) 's Twitter Profile
Alex Baras

@alexander_baras

Associate Professor of Pathology, Urology, and Oncology.
Director of Precision Medicine Informatics.
Johns Hopkins Sidney Kimmel Comprehensive Cancer Center.

ID: 1303037109683589120

calendar_today07-09-2020 18:27:23

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๐‰๐จ๐ก๐ง-๐–๐ข๐ฅ๐ฅ๐ข๐š๐ฆ ๐’๐ข๐๐ก๐จ๐ฆ, ๐Œ๐ƒ, ๐๐ก๐ƒ (@john_will_i_am) 's Twitter Profile Photo

Our #ASH2020 abstract is now live! We present a multiple-instance deep learning model capable of rapidly identifying t(15;17) #APL from peripheral smear, potentially allowing more timely and appropriate therapy to this aggressive form of leukemia. ash.confex.com/ash/2020/webprโ€ฆ

Our #ASH2020 abstract is now live! We present a multiple-instance deep learning model capable of rapidly identifying t(15;17) #APL from peripheral smear, potentially allowing more timely and appropriate therapy to this aggressive form of leukemia. 

ash.confex.com/ash/2020/webprโ€ฆ
๐‰๐จ๐ก๐ง-๐–๐ข๐ฅ๐ฅ๐ข๐š๐ฆ ๐’๐ข๐๐ก๐จ๐ฆ, ๐Œ๐ƒ, ๐๐ก๐ƒ (@john_will_i_am) 's Twitter Profile Photo

#DeepTCR is a comprehensive deep learning framework for doing both unsupervised & supervised analyses at the sequence and repertoire level. Github ๐Ÿ‘‡ github.com/sidhomj/DeepTCR Docs ๐Ÿ‘‡ sidhomj.github.io/DeepTCR/ Tutorials ๐Ÿ‘‡ github.com/sidhomj/DeepTCโ€ฆ

๐‰๐จ๐ก๐ง-๐–๐ข๐ฅ๐ฅ๐ข๐š๐ฆ ๐’๐ข๐๐ก๐จ๐ฆ, ๐Œ๐ƒ, ๐๐ก๐ƒ (@john_will_i_am) 's Twitter Profile Photo

The core of all our deep learning methods is a deep learning "featurization" block which learns a joint representation of TCR-Seq inputs (CDR3 sequence, V/D/J gene usage). In our latest version, we even incorporate HLA background as a possible input (more on this later).

The core of all our deep learning methods is a deep learning "featurization" block which learns a joint representation of TCR-Seq inputs (CDR3 sequence, V/D/J gene usage). In our latest version, we even incorporate HLA background as a possible input (more on this later).
๐‰๐จ๐ก๐ง-๐–๐ข๐ฅ๐ฅ๐ข๐š๐ฆ ๐’๐ข๐๐ก๐จ๐ฆ, ๐Œ๐ƒ, ๐๐ก๐ƒ (@john_will_i_am) 's Twitter Profile Photo

When using this block within a supervised sequence classification task, we see (unsurprisingly) leveraging antigen-specific labels improves the learning of these models. Furthermore, the convolutional layers of the network allow us to extract the learned "motifs."

When using this block within a supervised sequence classification task, we see (unsurprisingly) leveraging antigen-specific labels improves the learning of these models. Furthermore, the convolutional layers of the network allow us to extract the learned "motifs."
๐‰๐จ๐ก๐ง-๐–๐ข๐ฅ๐ฅ๐ข๐š๐ฆ ๐’๐ข๐๐ก๐จ๐ฆ, ๐Œ๐ƒ, ๐๐ก๐ƒ (@john_will_i_am) 's Twitter Profile Photo

My favorite part is this -> For the first time, we describe the ability of a model to regress a proxy for TCR binding affinity with a deep learning model. We demonstrate in doing this from TCR-TetSeq, we can determine the binding contacts of a TCR from high-throughput NGS data!

My favorite part is this -> For the first time, we describe the ability of a model to regress a proxy for TCR binding affinity with a deep learning model. We demonstrate in doing this from TCR-TetSeq, we can determine the binding contacts of a TCR from high-throughput NGS data!