Preclinical safety analysis using Artificial Intelligence on the example of Alzheimer’s Disease.

Dana Mavreli
September 19 2020
by Dana Mavreli
General

Introduction

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It has been estimated that approximately 80-90% of drug candidates fail before they get tested in humans. The majority of these failures is due to unexpected side effects not predicted in the preclinical stage (4). Therefore, it is essential for researchers to gather as much preliminary information as possible regarding potential side effects of a drug candidate.
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Understand the safety profile and identify potential off-target effects of α2 AR agonists

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Figure 1. Overview of side effects associated with α2 AR agonists.
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Figure 2. Indirect connections between α2 AR agonists and potential side effects.

Identify the localization profile of α2 ARs in organs/tissues

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Figure 3. Localization profile of α2 ARs.

Find side effects reported in animal studies

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Using Causaly, preclinical experts can collect and incorporate this pre-existing information into the design of a drug development strategy during the preclinical stages and address regulatory concerns ahead of time and reduce costs.
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Figure 4. Side effects of α2 AR agonists in animal models.

Explore drug-drug interactions

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Figure 5. Drug-drug interactions between α2 AR agonists and aspirin.

Summary

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