Facilitated By

San Antonio Medical Foundation

Finding combinatorial drug repositioning therapy for Alzheimer's disease and related dementias

The University of Texas at San Antonio

The University of Texas at San Antonio is an emerging Tier One research institution with nearly 29,000 students.

Principal Investigator(s)
Perry, George
Plascencia Villa, German
Funded by
Univ of TX HSC at Houston 744
Research Start Date
Status
Active

Alzheimer's disease (AD) is increasing in number as the U.S. and global population gets older. Despite
 enormous effort and expense. treatment remains at best modestly effective and no new drugs have been approved
 since 2003 [1.2]. The increasing interest in drug discovery through repositioning old drugs for new therapeutic
 applications throw light in the treatment for neurodegenerative diseases including AD [3]. Drug repositioning has
 unique advantages in speeding up the development process with a much lower cost and safer pathway
 (repositioned drugs have less risk of unexpected toxicity or side effects) when compared to de novo drug
 discovery approaches [4]. However. this is a non-trivial task and naive in silico methods for drug design and
 discovery fails to identify useful targets [5]. AD is a highly complex disease characterized by distinct and
 neuropathological phenotypes [6]. and there are even syndromes mimics AD (amnestic dementia syndrome [7]).
 which was recently identified in retrospective autopsy studies. Because our understanding on AD is still not
 comprehensive. many seemingly promising results (based on partially validated mechanisms) show no activity in
 vivo. leading to their abandonment in further studies [3]. We believe it is necessary to think out of the box and
 increase the search space to include drug combinations. which can overcome drug resistance and target multiple
 biomarkers for more effective treatment. Depending on the perspective. we can exam this problem either
 bottom-up or top-down. The bottom-up strategy is to screen drug combinations based on their causal effects to
 AD using observed healthcare data (claims. electronic health records. etc.). The top-down strategy. on the other
 hand. is based on the pharmacology and biology knowledge (i.e.. drug-gene interaction and cellular signaling
 pathways). There is unique strength in each strategy and we will carefully study them in the following aims:
 
 Aim 1: Identify potential drug combinations that could lead to a lower Alzheimer onset rate using large
 observational databases (e.g.. EHR and claim database)
 Task 1.1: Develop highly scalable algorithms based on balanced gradient boosting tree to mine drug combinations
 that have positive causal relationship with the low onset rate of AD
 Task 1.2: Develop novel optimization strategies based on tensor factorization to identify clusters of candidate
 drugs to reduce the search space for drug combinations while maintaining high model utility
 Task 1.3: Use cell-model to test and validate the efficacy of highly ranked drug combination candidates
 
 Aim 2: Predict AD-protective drug combinations based on cellular signaling pathways
 Task 2.1: Develop gene oncology knowledgebase based on literature to predict drug combinations targeting
 specific genes
 Task 2.2: Use oncology enriched multi-modality gene disease network (including drug. gene. pathway. and
 disease) to predict potential AD-protective drug combinations using deep graph convolution network (GCN)
 Task 2.3: Conduct biological validation on combinatorial drug therapies in ???????in vitro???????? models of AD
 
 Aim 3: Develop software and webservice to enable user-friendly interactions and efficient deployment
 Task 3.1: Build ready-to-use client-side toolkits. and open-source them through Github and release preconfigured
 Docker container in Dockerhub to enable easy adoption
 Task 3.2: Develop a webservice with RESTful APIs to support cloud-side applications by moving computation to
 data rather than supplying data to model
 
 We will combine big biomedical data from complementary sources. state-of-the-art informatics models.
 AD-specific domain expertise. and biology knowledge and validation into a coherent framework to tackle AD
 with potential combinatorial drug therapy in an exponentially larger. challenging yet promising space when
 compared with traditional drug repositioning models considering one single drug at a time.

Collaborative Project
Basic Research
Aging
Neuroscience