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Dive into the research topics where Lu-Yong Wang is active.

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Featured researches published by Lu-Yong Wang.


Journal of Computational Biology | 2006

Exploiting interactions among polymorphisms contributing to complex disease traits with boosted generative modeling.

Lu-Yong Wang; Dorin Comaniciu; Daniel P. Fasulo

Although there has been great success in identifying disease genes for simple, monogenic Mendelian traits, deciphering the genetic mechanisms involved in complex diseases remains challenging. One major approach is to identify configurations of interacting factors such as single nucleotide polymorphisms (SNPs) that confer susceptibility to disease. Traditional methods, such as the multiple dimensional reduction method and the combinatorial partitioning method, provide good tools to decipher such interactions amid a disease population with a single genetic cause. However, these traditional methods have not managed to resolve the issue of genetic heterogeneity, which is believed to be a very common phenomenon in complex diseases. There is rarely prior knowledge of the genetic heterogeneity of a disease, and traditional methods based on estimation over the entire population are unlikely to succeed in the presence of heterogeneity. We present a novel Boosted Generative Modeling (BGM) approach for structure-model the interactions leading to diseases in the context of genetic heterogeneity. Our BGM method bridges the ensemble and generative modeling approaches to genetic association studies under a case-control design. Generative modeling is employed to model the interaction network configuration and the causal relationships, while boosting is used to address the genetic heterogeneity problem. We perform our method on simulation data of complex diseases. The results indicate that our method is capable of modeling the structure of interaction networks among disease-susceptible loci and of addressing genetic heterogeneity issues where the traditional methods, such as multiple dimensional reduction method, fail to apply. Our BGM method provides an exploratory tool that identifies the variables (e.g., disease-susceptible loci) that are likely to correlate and contribute to the disease.


research in computational molecular biology | 2006

Alignment of mass spectrometry data by clique finding and optimization

Daniel Fasulo; Anne-Katrin Emde; Lu-Yong Wang; Karin Noy; Nathan Edwards

Mass spectrometry (MS) is becoming a popular approach for quantifying the protein composition of complex samples. A great challenge for comparative proteomic profiling is to match corresponding peptide features from different experiments to ensure that the same protein intensities are correctly identified. Multi-dimensional data acquisition from liquid-chromatography mass spectrometry (LC-MS) makes the alignment problem harder. We propose a general paradigm for aligning peptide features using a bounded error model. Our method is tolerant of imperfect measurements, missing peaks, and extraneous peaks. It can handle an arbitrary number of dimensions of separation, and is very fast in practice even for large data sets. Finally, its parameters are intuitive and we describe a heuristic for estimating them automatically.We demonstrate results on single- and multi-dimensional data.


international conference of the ieee engineering in medicine and biology society | 2006

A fast boosting-based screening method for large-scale association study in complex traits with genetic heterogeneity.

Lu-Yong Wang; Daniel Fasulo

Genome-wide association study for complex diseases will generate massive amount of single nucleotide polymorphisms (SNPs) data. Univariate statistical test (i.e. Fisher exact test) was used to single out non-associated SNPs. However, the disease-susceptible SNPs may have little marginal effects in population and are unlikely to retain after the univariate tests. Also, model-based methods are impractical for large-scale dataset. Moreover, genetic heterogeneity makes the traditional methods harder to identify the genetic causes of diseases. A more recent random forest method provides a more robust method for screening the SNPs in thousands scale. However, for more large-scale data, i.e., Affymetrix Human Mapping 100K GeneChip data, a faster screening method is required to screening SNPs in whole-genome large scale association analysis with genetic heterogeneity. We propose a boosting-based method for rapid screening in large-scale analysis of complex traits in the presence of genetic heterogeneity. It provides a relatively fast and fairly good tool for screening and limiting the candidate SNPs for further more complex computational modeling task


Archive | 2006

System and method for integrating heterogeneous biomedical information

Xiang Sean Zhou; Dorin Comaniciu; Alok Gupta; Zhuowen Tu; Daniel Fasulo; Lu-Yong Wang; Peiya Liu; Saikat Mukherjee; Amit Chakraborty


Archive | 2005

Computer system and method for medical assistance with imaging and genetics information fusion

Xiang Sean Zhou; Lu-Yong Wang; Dorin Comaniciu; David E. Gustafson; Bill Stewart; Sriram Krishnan


Archive | 2006

Joint classification and subtype discovery in tumor diagnosis by gene expression profiling

Lu-Yong Wang; Zhuowen Tu; Daniel Fasulo; Dorin Comaniciu


Archive | 2008

Method for developing test for neuropsychiatric disease

Lu-Yong Wang; Xiaoguang Lu; Bogdan Georgescu; Daniel Fasulo


Archive | 2006

System und Verfahren zur automatischen molekularen Diagnose von ALS basierend auf einer Boosting-Klassifikation

Amil Chakraborty; Dorin Comaniciu; Lu-Yong Wang


Archive | 2006

Method for diagnosis of amylotrophic lateral sclerosis, comprising surface-enhanced desorption-ionisation mass spectrometry of proteins from patients and analysing peak values on an alternating decision tree

Amil Chakraborty; Dorin Comaniciu; Lu-Yong Wang


Archive | 2006

System und Verfahren zur Molekulardiagnose von Depressionen auf der Grundlage eines Boosting der Klassifikation

Amil Chakraborty; Dorin Comaniciu; Lu-Yong Wang

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Zhuowen Tu

University of California

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