Preface
Page: iii-vi (4)
Author: Anton Yuryev and Nikolai Daraselia
DOI: 10.2174/978160805437411201010iii
List of Contributors
Page: vii-vii (1)
Author: Anton Yuryev and Nikolai Daraselia
DOI: 10.2174/978160805437411201010vii
Re-Evaluating Androgen Receptor as a Target in Anti-Prostate Cancer Therapy
Page: 3-23 (21)
Author: Dmitry Sivogrivov and Nikolai Daraselia
DOI: 10.2174/978160805437411201010003
PDF Price: $15
Abstract
Androgen deprivation therapy (ADT) is the gold standard for advanced stages of prostate cancer due to the good patient responding to this treatment. Nevertheless, in most cases the disease acquires hormone-refractory status which is considered incurable. The aim of this study is to draw a mechanistic model of androgen receptor (AR) signaling in normal prostate and cancerous tissue in order to better understand the causes of treatment failure. With assistance of Pathway Studio software (Ariadne Genomics Inc., USA) we have created overview pathway showing principal signaling cascades disturbed during prostate cancer development and progression. We further discuss the role of androgen receptor in homeostasis of prostate normal cells and in deregulating signaling of cancer cells. Due to AR involvement not only in proliferation, but also in apoptosis, invasive growth and in cell-to-cell communication, we hypothesized that ADT in some cases may contribute to the development of the castration resistant cancer. We review that upon androgen deprived conditions impaired AR activity can lead to the disturbances in multiple pathways thereby influencing global homeostasis of the prostate. We concluded that potential of AR to potentiate prostate cancer rather than inhibiting it should be taken into consideration when choosing ADT as an option for prostate cancer management.
Role of Ca2+-Mediated Signaling in ALS Pathology
Page: 24-72 (49)
Author: Ekaterina A. Kotelnikova, Mikhail A. Pyatnitskiy, Rachel L. Redler and Nikolay V. Dokholyan
DOI: 10.2174/978160805437411201010024
PDF Price: $15
Abstract
Familial amyotrophic lateral sclerosis (fALS) is a hereditary disorder of motor neurons that is caused by mutation in Cu, Zn superoxide dismutase (SOD1) in a subset of cases. The onset of the disease is relatively late, usually at age 50 or later, and is associated with interrelated molecular mechanisms of neurodegeneration. One of the mechanisms that can promote ALS progression is increased intracellular calcium concentration. The only market-available drug for ALS targets glutamate receptors and slows disease in part by mitigating excitotoxicity, a process in which persistent stimulation of glutamate receptors leads to pathologically high calcium concentration. To dissect the potential contributions of calcium mishandling to ALS, we have processed several publically available expression datasets related to fALS and analyzed the differential expression of genes related to calcium homeostasis. We find that SOD1- related fALS is associated with changes in expression of numerous genes related to calcium handling. Several genes which are down-regulated in fALS are targets of the repressor element-1 transcription factor/neuron restrictive silencer factor (REST/NRSF) transcription factor, which is normally inactivated in neuronal tissue. Our meta-analysis shows that changes in gene expression occurring in SOD1-related fALS promote calcium mishandling through dysregulation of multiple pathways, and that aberrant REST/NRSF activity may underlie some errors in calcium homeostasis.
Development of Mechanistic Model for Drug-Induced Cholestasis and its Applications for Drug Development
Page: 73-103 (31)
Author: Nikolai Daraselia, Pat Morgan and Anton Yuryev
DOI: 10.2174/978160805437411201010073
PDF Price: $15
Abstract
We describe construction of mechanistic model for drug-induced cholestasis using information available from ResNet and ChemEffect knowledge networks in Pathway Studio software. We first developed the mechanistic model using information about protein targets of the cholestasis-inducing drugs. We then expanded the model by incorporating knowledge about protein functional annotation, protein homology, canonical pathways and pathway reconstruction. The expanded model provides a toxicity mechanism for 81% of the drugs known to induce cholestasis vs. 58% of the drugs explained by the original model. Using the model we suggest that FGF19 secreted proteins are the biomarker for drug-induced cholestasis. In this discussion we suggest how the mechanistic model can be used for predicting cholestasic risk for new compounds, how it can be used for development of biomarker panel to monitor cholestasis risk in patient during drug therapy, and how the model can be used in personalized medicine for evaluating patient predisposition for cholestasis.
Pathways Disturbed in Duchenne Muscular Dystrophy
Page: 104-130 (27)
Author: Maria A. Shkrob, Mikhail A. Pyatnitskiy, Pavel K. Golovatenko-Abramov and Ekaterina A. Kotelnikova
DOI: 10.2174/978160805437411201010104
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Abstract
The underlying cause of Duchenne muscular dystrophy (DMD) – mutations in the dystrophin gene – is known for 25 years. Still many details are to be elucidated to reconstruct the complete picture of DMD pathogenesis explaining how the lack of dystrophin leads to the disease symptoms. Dissecting the complex disease into a set of disturbed pathways helps organizing already known facts and discovering new nodes important for disease progression.
We suggest three approaches to characterize DMD through pathways. First, we manually built DMD pathways based on the literature evidence to show how intersecting disease-specific pathways allows identification of common regulators in DMD which might be considered as potential drug targets. Second, we used algorithmically generated subnetworks and a set of curated expression targets pathways to analyze genes that change expression in DMD. Using collection of the predefined pathways or automatically generated subnetworks for data analysis reveals new nodes (e.g. ESRRA and SREBF1) and pathways (e.g. IL6 and IGF1 signaling) crucial for the disease but not yet covered in literature.
Mechanism of Synergistic Carcinogenesis from Hypergastrinemia and Helicobacter Infection
Page: 131-150 (20)
Author: Anton Yuryev
DOI: 10.2174/978160805437411201010131
PDF Price: $15
Abstract
We have built a model for gastric cancer predisposition caused by hypergastrenimia during Helicobacter infection. The model was built using publically available data form hypergastrenimic transgenic mice infected with Helicobacter. We used the model to identify potential drug targets for gastric cancer, annexin II and TRAF6, and to find prognostic biomarkers for gastric cancer predisposition due to hypergastrenimia.
Sub-Network Enrichment and Cluster Analysis Reveal Possible Pathways for Cetuximab Sensitivity
Page: 151-172 (22)
Author: Mikhail A. Pyatnitskiy, Maria A. Shkrob, Nikolai D. Daraselia and Ekaterina A. Kotelnikova
DOI: 10.2174/978160805437411201010151
PDF Price: $15
Abstract
Patient stratification or, a personalized approach to medical treatment, is a promising approach in modern medicine. Finding biological patterns within a group of patients with the same diagnosis could lead to more precise and effective therapies. To address this issue it is necessary to reveal different mechanisms within the same disease, to find new biomarkers, and to develop new diagnostic tests that would distinguish patients from different subgroups.
Cancer sub-typing based on clustering of individual patient gene expression profiles has been widely used for various types of cancer. Here we propose a new approach which includes the consecutive use of Sub-network enrichment analysis algorithm (SNEA) for individual differential expression profiles and biclustering of found expression regulators and samples.
We analyzed nine publicly available microarray datasets with data from patients suffering from colorectal cancer as compared to healthy donors, including one dataset containing supplementary information on patient response to anti-EGFR therapy with cetuximab. We have identified several patient subtypes characterized by specific regulatory clusters (pathways) and mapped the data about cetuximab response onto the heat map of pathway activity for each patient. We found that the most prominent mechanism that distinguished responders from non-responders is dependent on regulators from the TGF-β/SMAD pathway and corresponds to the epithelial-tomesenchymal transition (EMT).
Index
Page: 173-193 (21)
Author: Anton Yuryev and Nikolai Daraselia
DOI: 10.2174/978160805437411201010173
Introduction
Most findings about molecular interactions and cellular regulatory events are published in peer-reviewed scientific literature in the form of scientific jargon. The computerized text-mining algorithms are used to convert free grammar of human language into a set of formalized relationships between biological concepts in order to use this wealth of information. The compendium of such interactions extracted from an entire set of biomedical literature is a called knowledge network. Knowledge networks are the first step in the process of digitizing molecular biological knowledge. The next step is building molecular models depicting principal molecular events that govern various biological processes. Data mining in knowledge networks is the essence of building new biological models. The purpose is to elucidate major pathways of information flow through a molecular physical interaction network that happens during a disease, a cell process or an experiment. Such models contain key proteins involved in the process and can be used for prioritizing disease targets, for understanding of drug action and prevention of drug-induced toxicities, for analysis of patient predispositions and design of personalized therapies, for design of diagnostic biomarkers and analysis of patient molecular data. This e-book contains detailed examples illustrating the path to the digital biology and computerized drug development for personalized medicine. It provides conceptual principals for building biological models and for applying the models to make predictions relevant for drug development and translational medicine. The e-book will also be useful for researchers who use high-throughput technologies for molecular profiling of disease and drug action. It provides examples for analysis of gene expression microarrays to infer biological models, to find biomarkers for drug response and for applications of high-throughput molecular profiling technologies for personalized medicine. Scientists in academia, in pharmaceutical industry as well as graduate students will benefit from reading this book. The illustrations from the book can also be readily used in taught courses for molecular biology and pharmacology.