Annual International Conference on Critical Assessment of Massive Data Analysis
Washington, DC | July 12-16, 2026

Programme

The scientific program includes keynotes by leading researchers in the field (Prof Katherine Pollard and Prof Hoon Cho).

Schedule

Wednesday, 15 July 2026

11:00CAMDA Welcome & Overview 
11:10CAMDA Keynote: Strain-resolved metagenomics enables detection of bacterial genes associated with human traitsKatherine Pollard, UCSF, U.S.A.
12:00CAMDA Challenges - IntroductionPaweł Łabaj, MCB UJ, Poland
12:20Differential Connectivity Analysis of Integrated Gut Microbiome Networks for Disease PredictionYulin Li, Univeristy of Florida, U.S.A.
13:00Lunch 
14:20Metabolic Pathways as Ecological Niches: Topological Reorganization of Gut Microbiome Functional Networks Across Health and DiseaseNelly Selem, UNAM, Mexico
14:40A Dual-Layer Network Framework Reveals Hidden Functional Drivers of Gut Microbiome DysbiosisSafa Bushnaq, Oxford Brookes University, U.K.
15:00Knowledge Graph-Guided Interpretation of Disease-Specific Taxon-Taxon Interaction Networks in the Gut MicrobiomeHe Cheng, University of Colorado Anschutz Medical Campus, U.S.A.
15:20Network-based optimal transport analysis of gut microbiome data in colorectal cancerJung Hun Oh, Memorial Sloan Kettering Cancer Center, U.S.A.
15:30Metabolite-centric functional annotation with context-specific starting pointsIvory Blakley, UNC Charlotte, U.S.A.
15:40Predicting Resistance with ALPARAlper Yurtseven, Helmholtz Institute for Pharmaceutical Research Saarland, Germany
16:00Afternoon break 
16:40An Accurate Machine Learning Workflow for Inference of Antimicrobial Resistance from Bacterial GenomesDavid Danko, Cornell University, U.S.A.
17:20Quantifying uncertainty in protein representations across models and tasksR. Prabakaran, Emory University, U.S.A.
18:00Closing remarks 

Thursday, 16 July 2026

08:40CAMDA Welcome  
08:50CAMDA Keynote: Towards Privacy-Preserving Genomics: Understanding and Mitigating RisksHoon Cho, Yale, U.S.A.
09:40A rigorous benchmarking of alignment-based HLA typing algorithms for RNA-seq dataSerghei Mangul, USC, U.S.A. / MCB UJ, Poland
10:00Morning Break 
11:00The Health Privacy Challenge - IntroductionHakime Öztürk, EMBL Germany
11:20A Unified Weighted-Distance Framework for No-Box Membership Inference Attacks on Synthetic Gene Expression DataOwen Tucker, Emory University, U.S.A.
11:40Privacy Auditing of Synthetic Single-Cell RNA-seq DataSteven Golob, University of Washington, Tacoma, U.S.A.
12:00Does Synthetic Bulk RNA-seq Data Protect Donors? Privacy Auditing through Membership Inference AttacksCharlene Jarrell, University of Washington, Tacoma, U.S.A.
12:20Privacy-Preserving Synthetic Single-Cell RNA-seq via NMF-Compressed Truncated Vine CopulasAndrew Wicks, DFKZ, Germany
12:40From Graphical Models to Foundation Models: Synthetic Bulk RNA-seq Data GenerationDaniil Filienko, University of Washington, Tacoma, U.S.A.
12:50Two-Stage P-PGM + Beta-CVAE Pipeline for Differentially Private Synthetic RNA-seq GenerationEren Kotar, Boğaziçi University, Turkey
13:00Lunch 
14:20Harmonization and Integration of Pharmacogenomics ScreensNicole Mattson, University of California San Diego, U.S.A.
15:00Adapting Mamba 2 For EHR Data Using Continual LearningMattia Prosperi, University of Florida, U.S.A.
15:20CAMDA Invited: Insights from a Large Community Challenge Benchmark Applicable to AI/ML-based Complex BiomarkersWendell Jones, MAQC Society
15:50CAMDA Trophy 
18:00Conference closing 

Keynotes

Dr. Katherine S. Pollard

Director of the Gladstone Institute of Data Science & Biotechnology

Investigator at the Chan Zuckerberg Biohub

Professor of Bioinformatics at UCSF

Keynote Title: Strain-resolved metagenomics enables detection of bacterial genes associated with human traits

Abstract:

Metagenomic data holds great promise for characterizing human-associated microbes at the strain level. However, a deeply sequenced tree of life poses many challenges for traditional bioinformatics approaches, ranging from computational complexity to alignment errors and blurred species boundaries. This talk will explore these issues and some emerging solutions that enable strain-level and gene-level characterization of microbiomes. These tools make it possible to link microbiome genotypes with human traits at biobank scale. A mixed modeling approach will be presented along with some examples for how it can be used to generate testable causal hypotheses.

 

About the speaker:

Dr. Katherine S. Pollard is Director of the Gladstone Institute of Data Science & Biotechnology, Investigator at the Chan Zuckerberg Biohub, and Professor of Bioinformatics at UCSF. Her lab develops machine learning models and open-source bioinformatics software for predictive understanding and AI-guided experimentation with an emphasize on human genetics and genomics. Previously, Dr. Pollard was an assistant professor in the University of California, Davis Genome Center and Department of Statistics. She earned her PhD in Biostatistics from the University of California, Berkeley and was a comparative genomics postdoctoral fellow at the University of California, Santa Cruz. She was awarded the Thomas J. Watson Fellowship, the Sloan Research Fellowship, and the Alumna of the Year from UC Berkeley. She is a member of the National Academy of Medicine and a Fellow of the American Association for the Advancement of Science, International Society for Computational Biology, American Institute for Medical and Biological Engineering, and California Academy of Sciences.

Hyunghoon (Hoon) Cho, PhD

Assistant Professor of Biomedical Informatics & Data Science and of Computer Science at Yale

Director of Graduate Admissions for the Human Genome Sciences PhD Program at Yale

Keynote Title: Towards Privacy-Preserving Genomics: Understanding and Mitigating Risks

Abstract:

As genomic datasets continue to expand in scale, diversity, and modality, the privacy implications of sharing massive amounts of human data are becoming increasingly urgent. I will discuss how principled mathematical frameworks for quantifying privacy risk can deepen our understanding of genomic privacy while guiding the development of practical methods for privacy-preserving data sharing and analysis. I will highlight recent work on vulnerabilities in genome imputation services, linkage risks in transcriptomic data, and formal approaches for genetic association studies with privacy guarantees. I will conclude with an outlook on how community-driven efforts can accelerate progress in this area, enabling the scientific community to maximize the value of data sharing while safeguarding the individuals who make such research possible.

 

About the speaker: 

Hyunghoon (Hoon) Cho, PhD, is an Assistant Professor of Biomedical Informatics & Data Science and of Computer Science at Yale. He also serves as Director of Graduate Admissions for the Human Genome Sciences PhD Program at Yale. He received his PhD in Electrical Engineering and Computer Science from MIT in 2019 and previously earned his MS and BS with Honors in Computer Science from Stanford University. Prior to joining Yale, he was a Schmidt Fellow and Principal Investigator at the Broad Institute of MIT and Harvard. His research focuses on overcoming key computational challenges in analyzing massive and distributed biomedical data, creating modern tools based on applied cryptography and machine learning. He is particularly interested in developing privacy-preserving, scalable AI methods and mathematical models for extracting insights from complex genomic data to advance human health. He is a recipient of the NIH Director’s Early Independence Award.

PAST KEYNOTE SPEAKERS

IMPORTANT DATES

Call for Abstracts Opens

1 February 2026

CAMDA Extended Abstracts Deadline

7 May 2026

Late Poster Submissions Deadline

7 May 2026

Late Poster Acceptance Notifications

14 May 2026

CAMDA Acceptance Notification

14 May 2026

CAMDA Conference

12-16 July 2026

ISMB 2026 MAIN EVENT

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