Friday Dec 13th Poster Session (4 - 5.20pm & 6.10-8pm)
Ammar Tareen and Justin Kinney. Biophysical models of cis-regulation as interpretable neural networks.
Aakash Sur. A Data Driven Approach to Scaffolding Genomes with Hi-C
Anastasiya Belyaeva, Kaie Kubjas, Lawrence Sun and Caroline Uhler. Inferring 3D Genome Organization in Diploid Organisms
Bowen Dai and Chris Bailey-Kellogg. Protein-Protein Binding Site Prediction by Geometric Deep Learning
Camille Rochefort-Boulanger, Léo Choinière, Jean-Christophe Grenier, Pierre-Luc Carrier and Julie Hussin. Generalization Capability of the Diet Network Model on Genomic Data
Daniel Mas Montserrat, Carlos Bustamante and Alexander Ioannidis. Class-Conditional VAE-GAN for Local-Ancestry Simulation
Etienne Meunier, German Novakovsky and Sara Mostafavi. Interpreting deep learning models in genomics using genetic algorithms
Galip Gurkan Yardimci, Jacob Schreiber, Jeffrey Bilmes and William Stafford Noble. Selecting representative sets of genomic loci
Ian Covert and Su-In Lee. Shapley Feature Utility.
Iman Deznabi, Büşra Arabacı, Mehmet Koyuturk and Oznur Tastan. DeepKinZero: Zero-Shot Learning for Predicting Kinase-Phosphosite Associations
Jack Lanchantin and Yanjun Qi Graph. Convolutional Networks for Epigenetic State Prediction Using Both Sequence and 3D Genome Data
Jay S Stanley III, Scott Gigante, Guy Wolf and Smita Krishnaswamy. Manifold Alignment with Feature Correspondence
Raquel Aoki and Martin Ester. Bayesian Predictive Model combined with Matrix Factorization for Causal Inference Analysis
John Halloran and David Rocke. GPU-Accelerated SVM Learning for Extremely Fast Large-Scale Proteomics Analysis
Julie Jiang, Li-Ping Liu and Soha Hassoun. Predicting Reactions for Biochemical Networks Using Graph Embeddings
Michael Kleyman, Cathy Su, Bilge Esin Ozturk, Jing He, William Stauffer, Leah Byrne and Andreas Pfenning. Nested Tree Cell State Model
Rohit Jammula, Vishnu Tejus and Shreya Shankar. Optimal Transfer Learning Model for Binary Classification of Funduscopies through Simple Heuristics
Shreshth Gandhi, Leo Lee, Andrew Delong, David Duvenaud and Brendan Frey. cDeepbind: A context sensitive deep learning model of RNA-protein binding
Yue Wu and Sriram Sankararaman. Fast estimation of genetic correlation for Biobank-scale data
Saturday Dec 14th Poster Session (11:30 - 1:30 pm)
Nick Bhattacharya, Neil Thomas and Roshan Rao. Can Self-Supervised Models Capture Sequence Conservation?
Abhishek Sarkar, Mengyin Lu and Matthew Stephens. Common pitfalls in the analysis of scRNA-seq data
Adam Gayoso, Romain Lopez, Zoë Steier, Jeffrey Regier, Aaron Streets and Nir Yosef. A Joint Model of RNA Expression and Surface Protein Abundance in Single Cells
Alan Moses, Alex Lu, Amy Lu and Marzyeh Ghassemi. Transfer Learning vs. Batch Effects: what can we expect from neural networks in computational biology?
Alexey Strokach, David Becerra, Carles Corbi, Albert Perez-Riba and Philip M. Kim. Designing novel proteins with high accuracy using deep graph neural networks
Alice Yue, Cedric Chauve, Maxwell Libbrecht and Ryan Brinkman. Identifying differential cell populations in flow cytometry data accounting for marker frequency
Anastasiia Razdaibiedina, Jeevaa Velayutham and Miti Modi. Learning from mistakes: reconstruction of biomedical images with GAN-aided dataset augmentation
Anat Etzion-Fuchs, David A. Todd and Mona Singh. dSPRINT: an ensemble approach for predicting interaction sites within protein domains
Andreea Gane, David Belanger, David Dohan, Christof Angermueller, Ramya Deshpande, Suhani Vora, Olivier Chapelle, Babak Alipanahi and Lucy Colwell. A Comparison of Generative Models for Sequence Design
Ayse B. Dincer, Joseph D. Janizek, Safiye Celik, Naozumi Hiranuma, Kamila Naxerova and Su-In Lee. DeepProfile: Interpretable Deep Learning of Latent Variables from a Compendium of Expression Profiles for 18 Human Cancers
Bernard Ng, William Casazza, Farnush Farhadi and Sara Mostafavi. Cascading Epigenomic Model for GWAS
Bowen Chen, Neda Shokraneh Kenari, Habib Daneshpajouh, Kay C. Wiese and Max W Libbrecht. Continuous chromatin state feature annotation of the human epigenome
Cait Harrigan, Yulia Rubanova, Quaid Morris and Alina Selega. TrackSigFreq: subclonal reconstructions based on mutation signatures and allele frequencies
Carles Corbi-Verge, April Muller, Marcus Noyes and Philip Kim. C2H2 Zinc Finger DNA Binding Motif Prediction combining High-throughput experiments and Deep Learning
Caroline Weis, Max Horn, Bastian Rieck and Karsten Borgwardt. Sparse representations for MALDI-TOF based microbial classification
Conor Delaney, Alexandra Schnell, Louis Cammarata, Aaron Yao-Smith, Aviv Regev, Vijay Kuchroo and Meromit Singer. COMET: A tool for predicting multiple gene-marker panels from single-cell transcriptomic data
Gian Marco Visani, Michael Hughes and Soha Hassoun. Classification of Enzyme Promiscuity Using Positive, Unlabeled, and Hard Negative Examples
Haitham Elmarakeby, David Liu, Saud Aldubayan, Justin Hwang and Eliezer Van Allen. Informed sparsity for cancer discovery
Haohan Wang and Nila Ramaswamy. Structured High-dimension Variable Selection with P-value, with Applications of Transcriptome Association Study
Haoyang Zeng, Brandon Carter, Siddhartha Jain, Brooke Huisman, Michael Birnbaum and David Gifford. Machine learning optimization of MHC class II presented peptides
Hassan Kané, Mohamed Coulibali, Ali Abdalla and Pelkins Ajanoh. Combining graph and sequence information to learn protein representations
Hossein Sharifi-Noghabi, Shuman Peng, Olga Zolotareva, Colin Collins and Martin Ester. Adversarial Inductive Transfer Learning for pharmacogenomics datasets
Hui Ting Grace Yeo and David Gifford. Disentangling unwanted sources of variation in single-cell RNA-sequencing data under weak supervision
Hyunmin Lee, Zhen Hao Wu, Carles Corbi-Verges, Mac Mok, Sidney Kang, Shun Liao, Zhaolei Zhang and Michael Garton. De Novo Crystallization Condition Prediction with Deep Learning
Ian Covert, Uygar Sumbul and Su-In Lee. Principal Genes Selection
Iddo Drori, Darshan Thaker, Arjun Srivatsa, Daniel Jeong, Yueqi Wang, Linyong Nan, Fan Wu, Dimitri Leggas, Jinhao Lei, Weiyi Lu, Weilong Fu, Yuan Gao, Sashank Karri, Anand Kannan, Antonio Moretti, Chen Keasar and Itsik Pe'er. Accurate Protein Structure Prediction by Embeddings and Deep Learning Representations
Jacob Schreiber, Deepthi Hedge and William Noble. Zero-shot imputations across species are enabled through joint modeling of human and mouse epigenomics
Jeff Wintersinger, Stephanie Dobson, John Dick and Quaid Morris. Pairtree: fast reconstruction of cancer evolutionary history using pairwise mutation relationships
Joseph D. Janizek and Su-In Lee. Imposing smooth graph structure on the attributions of deep neural networks for improved RNA-seq analysis
Kevin Dsouza, Adam Li, Vijay Bhargava and Maxwell Libbrecht. A Cell Type-Agnostic Representation of the Human Epigenome through a Deep Recurrent Neural Network Model
Khawla Seddiki, Philippe Saudemont, Frederic Precioso, Nina Ogrinc, Maxence Wisztorski, Michel Salzet, Isabelle Fournier and Arnaud Droit. Feature learning with Deep Neural Networks for MS-based clinical diagnosis
Lan Huong Nguyen and Susan Holmes. Diffusion t-SNE for multiscale data visualization
Linhua Wang, Jeffrey Law, T. M. Murali and Gaurav Pandey. Data integration through heterogeneous ensembles for protein function prediction
Matthew Ploenzke and Peter Koo. Improving Convolutional Network Interpretability with Divergent Activations
Maxwell Libbrecht and Faezeh Bayat. Variance-stabilized units for sequencing-based genomic signals
Maxwell W Libbrecht, Rachel C W Chan and Michael M Hoffman. Segmentation and genome annotation algorithms
Meseret Bayeleygne. Speculative Scientific Inference via Synergetic Combination of Probabilistic Logic and Evolutionary Pattern Recognition
Michael Dimmick, Leo J Lee and Brendan J Frey. HiCSR: A Hi-C Super-Resolution Framework for Producing Highly Realistic Contact Maps
Nadav Brandes, Nathan Linial and Michal Linial. Powering Genetic Association Studies with Machine Learning
Nelson Johansen and Gerald Quon. A deep deconvolution approach for combining the high-resolution of single cell atlases with the scale of bulk genomics
Nicasia Beebe-Wang, Safiye Celik, Pascal Sturmfels, Sara Mostafavi and Su-In Lee. MD-AD: Multi-task deep learning for Alzheimer’s disease neuropathology
Nil Sahin, Mojca Mattiazzi-Ušaj, Matej Ušaj, Myra Paz Masinas, Charlie Boone, Brenda Andrews and Quaid Morris. Automated outlier detection and mutant phenotype discovery on single cell images
Oliver Snow, Hossein Sharifi-Noghabi, Jialin Lu, Olga Zolotareva, Mark Lee and Martin Ester. BDKANN - Biological Domain Knowledge-based Artificial Neural Network for drug response prediction
Oscar Clivio, Romain Lopez, Jeffrey Regier, Adam Gayoso, Michael I. Jordan and Nir Yosef. Detecting Zero-Inflated Genes in Single-Cell Transcriptomics Data
Paul Bertin, Mohammad Hashir, Martin Weiss, Vincent Frappier, Theodore Perkins, Geneviève Boucher and Joseph Paul Cohen. Is graph biased feature selection of genes better than random?
Peter Koo and Matthew Ploenzke. Interpreting Deep Neural Networks Beyond Attribution Methods: Quantifying Global Importance of Features
Pierre Boyeau, Romain Lopez, Jeffrey Regier, Adam Gayoso, Michael I. Jordan and Nir Yosef. Deep Generative Models for Detecting Differential Expression in Single Cells
Samuel Goldman, David Yang, Eli Weinstein and Debora Marks. Generative models for codon prediction and optimization
Sarvesh Nikumbh and Boris Lenhard. archR: Identification of Different Promoter Architectures Using Non-negative Matrix Factorization
Teresa Maria Rosaria Noviello, Michele Ceccarelli and Luigi Cerulo. DeepRFAM: a deep learning architecture for non-coding RNA functional prediction
Tyler Funnell, Allen Zhang, Diljot Grewal, Steven Mckinney, Ali Bashashati, Yi Kan Wang and Sohrab Shah. Integrated structural variation and point mutation signatures in cancer genomes using correlated topic models
Wei Qiu, Jiaming Guo, Xiang Li, Mengjia Xu, Mo Zhang, Ning Guo and Quanzheng Li. Multi-label Detection and Classification of Red Blood Cells in Microscopic Images
William Chen, Joseph D. Janizek and Su-In. Lee. EXPERT: Explainable Prediction of Transcription Factor Binding based on Histone Modification Data
Wout Bittremieux, Damon H. May, Jeffrey Bilmes and William S Noble. A learned embedding for efficient joint analysis of millions of mass spectra
Yiliang Zhang, Kexuan Liang, Molei Liu, Yue Li, Hao Ge and Hongyu Zhao. SCRIBE: a new approach to dropout imputation and batch effects correction for single-cell RNA-seq data