RECOMB satellite systems biology in La Jolla, CA.
Thanks to Rohith and Han-yu for blogging the talks at this conference! This conference brings together the systems biology community with selected papers published in Molecular Systems Biology.
The keynotes:
Trey Ideker - Comparative Genomics
 
Vista rears its ugly head as Trey's  talk is postponed due to technical difficulties! And we're off. The  well known-explosion in sequence specific information has been coupled  with a less-known exponential rise in interaction data. Sequence data  has served as the catalyst for many interesting avenues of research.  How can the interaction data be used as well? We're given a survey of  such applications:
(1) DNA Damage Response --- Utilizing  ChIP-CHIP assays in combination with knockout experiments to derive  a basic molecular interaction network which governs the transcriptional  response of a cell to DNA damage. There could be many false positives,  but it provides a great first generation systems-level examination of  an interesting phenotype.
(2) Cancer diagnosis --- Many previous  attempts have been made at classifying different types of cancer (in  this case breast cancer metastasis) using the expression level of genes.  Two studies completed over the past 7 years two groups have come up  with different sets of genes which correctly classify patients into  one of two types of breast cancer. Intriguing fact, there exists very  little overlap between these two sets of genes, can this be cleaned  up? Combine a molecular interaction network with patient expression  data to find sub-networks of genes whose expression is discriminative  between the two types of cancer. These modules display increased reproducibility  and improved classification accuracy; however, both measures still remain  slightly low. However, most interesting is that we are recovering true  causative genes, as opposed to downstream perturbed genes! One question,  can we discern which are causative versus down-stream modules?? The  future will tell.
Manolis Kellis - Regulatory Network  Inference
Can comparative genomics be used to  annotate specific functions for a particular region of a genome? A pretty  interesting look at how evolutionary signatures can be used to discern  regulatory motifs. Individual motifs seem to be regulated well across  the genome, hmm....how is this "motif" defined as (sequence,  alone?)?  Does regulatory sequence == promoters? Anyways, there  seem to be positional biases in the presence of the regulatory motifs.  Some of these motifs overlap with microRNA sequences. They've developed  a framework for identifying the microRNA signatures and thus discover  new miRNAs and new categories of microRNA families. A pretty surprising  discovery: the anti-sense strand of an miRNA may provide more powerful  regulation. His lab has pieced together these evolutionary signatures  and the discovered motifs to piece together a regulatory network that  covers over 80-% of the transcription factors and many of the edges  are supported both by literature and co-expression experiments. Seems  like a pretty unique way to generate a regulatory network. Just have  some questions as to the definition of these "sigantures"  and "motifs". Can this approach be extended to humans? 
 
Timothy Hughes --- Cracking the Second  Genetic Code
An exciting title to be sure. What  is the second genetic code?  Answer: Protein-DNA Interactions!  Determining the sequence specificity of a DNA-binding protein can be  "cracked" by analyzing the sequences that your protein of  interest binds to.  Utilizing a unique array, where DNA sequences  in lengths of 8-mers are represented in many different larger contexts  (32-mers). The plan is then to express the DNA-binding portion of your  favorite protein and run it through this custom array.  They've  generated a large data-set comprising DNA binding motifs for over 100  transcription factors. They then clustered the TFs based on their DNA  binding sequences and found that they're mostly all different (clusters  have low membership). They refine this data set by then examining particular  6-mers within the sequence and find that you can find some similarities  between TFs that wouldn't have been found on the larger scale. 
 
Ulrike Gaul - Decoding Transcription  Control in Drosophila Segmentation
To study the evolution of segementation  modules in fly, Dr. Gaul and coworkers started from scanning the genomic  sequences for cis-regulatory elements which minimize the free energy  between DNA and known segmentation TFs, Using known binding preference  for maternal and zygotic gap transcription factors. The identified binding  sites surprisingly do not correlate with conserved blocks in genomes.  They further showed that expression change correlate with binding site  turnover but not sequence turnover, suggesting that sequence conservation  is not a reliable indicator of functional conservation. Combined with  TF distribution in AP formation measured in lab, a thermodynamic model  was developed to predict expression levels of target genes. A substantial  amount of the predicted expression levels were validated in lab. (we got a little  lost after this...)
Naama Barkai - Evolution of Gene  Expression
Here we get a talk regarding the  "logic" of gene expression control, How can we consider the  interplay between a phenotype, gene expression, and environmental control?  They begin by examining ribosome synthesis, why? Because it's one of  the dominant expenditure of biosynthesis energy (interesting stats,  ~2000 ribosomes produced per minute). Makes sense to use this as a benchmark  in examining growth rate, as ribosome biosynthesis will be expected  to correlate to growth-rate.  In order to see how gene expression  may be correlated with various growth rates, they've used yeast grown  in chemostats wth different diution rates in order to produce yeast  with varying growth rates. The mRNA of these various yeast "strains"  can then be sampled and examined. Again, ribosomal protein expression  is used as a proxy for cell growth. But one problem how do we isolate  internal signals from external (environmental signals): by "confusing"  them. Don't examine chemostate at steady-state, but create a pulse-like  stress state and make sure to measure both growth rate and transcriptional  profile.  As one would expect we witness a delayed growth decline  following the perturbation along with a simultaneous decline in ribosomal  biogenesis and ribosomal proteins. However, in other perturbations such  as heat shock or NaCl addiction, we see a drop in ribosomal biogenesis  and ribosomal proteins before an accompanying drop in growth rate.
Mark Vidal - Interactome Networks
Start with a reminder that all of  biology comes down to the chemistry. Our graph abstraction of interactome  networks reduces the elegant complexity of ribbon-and-wire models of  protein interactions.  So how do we go about detecting these pair-wise  interactions: a throughback to the original Fields and Song Y2H paper.  Interactome maps have evolved continuously over time encompassing every  increasing number of nodes and covering increasingly more complex organisms.  The value we gain from networks increases when we begin to "color"  or annotate both the nodes as well as the edges, in order to allow for  actual biological facts to be extracted from them. Shift to the topic  of a human interaction network. First, up: what is the size of this  network? How many genes are contained in the human genome? MAPPIT --  a new technology to examine interactions, based not on transcription  factors, but rather a membrane-protein based platform. Final messages:  human binary networks contains on the order of 1 million interactions!  High throughput data can be higher quality then curated low throughput  data. Some interesting comparisons between the time frame it which took  to go from the development of the Sanger method to large scale genome  sequencing (~15 years), is almost equivalent to the same time frame  it took to go from the development of the Y2H method and the production  of large scale interactome networks. Now, an overview of disease in  relation to interactome networks:
(1) Inherited Ataxias --- Ataxia nodes  have a much smaller mean path length then non-disease nodes. 
 
(2) Diseaseome (a new ome!) -- all  nodes colored by the type of disease that gene is known to be associated  with. We then see cliques enriched for a particular color or disease. 
 
(3) Epstein-Barr virus and virus human  protein interaction maps --- Examination of viral proteins and their  interaction with host proteins. EBV proteins are found to interact preferentially  with human hub proteins!
What is the fundamental unit of human networks? The gene (protein) -- node OR is it the edge?
Examining edge perturbations versus  node perturbations might help us to acquire new insights in the future. 
 
Arul Chinnaiyan  - Bioinformatics as an Engine for Oncology Discovery 
 




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