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Dive into the research topics where Zeev Waks is active.

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Featured researches published by Zeev Waks.


Microbial Ecology in Health and Disease | 2017

Changes in vaginal community state types reflect major shifts in the microbiome

J. Paul Brooks; Gregory A. Buck; Guanhua Chen; Liyang Diao; David J. Edwards; Jennifer M. Fettweis; Snehalata Huzurbazar; Alexander Rakitin; Glen A. Satten; Ekaterina Smirnova; Zeev Waks; Michelle L. Wright; Chen Yanover; Yi Hui Zhou

ABSTRACT Background: Recent studies of various human microbiome habitats have revealed thousands of bacterial species and the existence of large variation in communities of microorganisms in the same habitats across individual human subjects. Previous efforts to summarize this diversity, notably in the human gut and vagina, have categorized microbiome profiles by clustering them into community state types (CSTs). The functional relevance of specific CSTs has not been established. Objective: We investigate whether CSTs can be used to assess dynamics in the microbiome. Design: We conduct a re-analysis of five sequencing-based microbiome surveys derived from vaginal samples with repeated measures. Results: We observe that detection of a CST transition is largely insensitive to choices in methods for normalization or clustering. We find that healthy subjects persist in a CST for two to three weeks or more on average, while those with evidence of dysbiosis tend to change more often. Changes in CST can be gradual or occur over less than one day. Upcoming CST changes and switches to high-risk CSTs can be predicted with high accuracy in certain scenarios. Finally, we observe that presence of Gardnerella vaginalis is a strong predictor of an upcoming CST change. Conclusion: Overall, our results show that the CST concept is useful for studying microbiome dynamics.


Scientific Reports | 2016

Driver gene classification reveals a substantial overrepresentation of tumor suppressors among very large chromatin-regulating proteins

Zeev Waks; Omer Weissbrod; Boaz Carmeli; Raquel Norel; Filippo Utro; Yaara Goldschmidt

Compiling a comprehensive list of cancer driver genes is imperative for oncology diagnostics and drug development. While driver genes are typically discovered by analysis of tumor genomes, infrequently mutated driver genes often evade detection due to limited sample sizes. Here, we address sample size limitations by integrating tumor genomics data with a wide spectrum of gene-specific properties to search for rare drivers, functionally classify them, and detect features characteristic of driver genes. We show that our approach, CAnceR geNe similarity-based Annotator and Finder (CARNAF), enables detection of potentially novel drivers that eluded over a dozen pan-cancer/multi-tumor type studies. In particular, feature analysis reveals a highly concentrated pool of known and putative tumor suppressors among the <1% of genes that encode very large, chromatin-regulating proteins. Thus, our study highlights the need for deeper characterization of very large, epigenetic regulators in the context of cancer causality.


medical informatics europe | 2012

Evicase: an evidence-based case structuring approach for personalized healthcare.

Boaz Carmeli; Paolo G. Casali; Anna Goldbraich; Abigail Goldsteen; Carmel Kent; Lisa Licitra; Paolo Locatelli; Nicola Restifo; Ruty Rinott; Elena Sini; Michele Torresani; Zeev Waks

The personalized medicine era stresses a growing need to combine evidence-based medicine with case based reasoning in order to improve the care process. To address this need we suggest a framework to generate multi-tiered statistical structures we call Evicases. Evicase integrates established medical evidence together with patient cases from the bedside. It then uses machine learning algorithms to produce statistical results and aggregators, weighted predictions, and appropriate recommendations. Designed as a stand-alone structure, Evicase can be used for a range of decision support applications including guideline adherence monitoring and personalized prognostic predictions.


Studies in health technology and informatics | 2015

Understanding Deviations from Clinical Practice Guidelines in Adult Soft Tissue Sarcoma.

Esther Goldbraich; Zeev Waks; Ariel Farkash; Marco Monti; Michele Torresani; Rossella Bertulli; Paolo G. Casali; Boaz Carmeli


Studies in health technology and informatics | 2013

A model-driven approach to clinical practice guidelines representation and evaluation using standards.

Ariel Farkash; John T. E. Timm; Zeev Waks


Archive | 2017

CLASSIFICATION AND IDENTIFICATION OF DISEASE GENES USING BIASED FEATURE CORRECTION

Boaz Carmeli; Zeev Waks; Omer Weissbrod


Archive | 2017

SYSTEM AND METHOD FOR IDENTIFYING CANCER DRIVER GENES

Boaz Carmeli; Omer Weissbrod; Zeev Waks


Archive | 2016

RELEVANCY ASSESSMENT AND VISUALIZATION OF BIOLOGICAL PATHWAYS

Boaz Carmeli; Bilal Erhan; Takahiko Koyama; Kahn Rhrissorrakrai; Ajay K. Royyuru; Filippo Utro; Zeev Waks


Journal of Clinical Oncology | 2015

Implementation of Watson Genomic Analytics processing to improve the efficiency of interpreting whole genome sequencing data on patients with advanced cancers.

Takahiko Koyama; Steven J.M. Jones; Filippo Utro; Yussanne Ma; Kahn Rhrissorrakrai; Yaoqing Shen; Boaz Carmeli; Martin R. Jones; Zeev Waks; Erin Pleasance; Raquel Norel; Richard G. Moore; Erhan Bilal; Andrew J. Mungall; Kirk Beaty; Jacquie Schein; Vanessa V. Michelini; Marco A. Marra; Ajay K. Royyuru; Janessa Laskin


Archive | 2014

Clinical Decision Support System over a bipartite graph

Boaz Carmeli; Ariel Farkash; Esther Goldbraich; Ksenya Kveler; Yevgenia Tsimerman; Zeev Waks

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