I-HDS (Institute for Healthcare Delivery Science) and The Brookdale Dept. of Geriatrics & Palliative Medicine invites you to join its Seminar Series, Wednesday, February 1st at 12:00pm via Zoom Conferencing.
Our guest speaker will be Wodan Ling, PhD, Assistant Professor, Weill Cornell.
Background:
Emerging large-scale microbiome-profiling studies introduce new opportunities as well as challenges. One challenge inherent to the large sample sizes is the batch effect, which arises from differential processing of specimens and can lead to spurious findings. Most existing strategies for mitigating batch effect rely on approaches designed for genomic analysis, failing to address the zero-inflated and over-dispersed microbiome data. Strategies tailored for microbiome data are restricted to association testing, failing to allow other analytic goals such as visualization. In this talk, we present the Conditional Quantile Regression (ConQuR) approach, the first robust and comprehensive method that accommodates the complex distributions of microbial read counts, and generates batch-removed zero-inflated read counts that can benefit all usual subsequent analyses. We demonstrate its state-of-the-art performance in removing the batch effect of microbiome data while preserving the signals of interest. Another challenge is the reliable biological implication of individual taxa. Classical tests often do not accommodate the realities of microbiome data, leading to power loss. Approaches tailored for microbiome data often have inflated false positive rates, generally due to unsatisfied distributional assumptions. Most extant approaches also fail in the presence of heterogeneous effects. In this talk, we present the zero-inflated quantile (ZINQ) approach, which is robust to complex distributions of microbiome data and improves testing power by summarizing signals over different quantiles of a taxon’s abundance, facilitating detection of heterogeneous effects. We show that ZINQ often has equivalent or higher power compared to existing tests even as it offers better control of false positives.
Biography:
Dr. Wodan Ling is an Assistant Professor in the Biostatistics Division in the Population Health Sciences Department at Weill Cornell Medicine. Prior to joining WCM, she was a post-doctoral research fellow at Fred Hutchinson Cancer Center and received her PhD degree in Biostatistics from Columbia University. Her current research lies in the development and application of robust and powerful quantile regression and deep learning approaches for complex and structured data in biomedical research, especially omics data. She has published papers in both top scientific and statistical journals, including Nature Communications, Microbiome, Annals of Applied Statistics, and Statistica Sinica. She loves music, enjoying playing piano and singing in choir.
Dial-In Information
Please email denise.williams1@mountsinai.org for zoom link & passcode
Wednesday, February 1, 2023 at 12:00pm to 1:00pm
Virtual EventAlumni, Faculty, Postdocs, Staff, Students, Health Care Professionals, Prospective Students, Prospective Faculty
Icahn School of Medicine at Mount Sinai, The Mount Sinai Hospital
Please email denise.williams1@mountsinai.org for zoom link & passcode
Wodan Ling, PhD, Assistant Professor, Biostatistics, Populaion Health Sciences, Weill Cornell