What’s the benefit of using AI at Verge?
If Verge’s machine learning-driven approach works as intended, it will reduce drug development process for discovering several different life-saving therapies for brain diseases like ALS, Alzheimer’s disease, Autism, and Parkinson’s disease, just to mention a few.
More specifically, Verge will use artificial intelligence to keep track of the impact certain therapies have on the human brain with a particular focus on the preclinical phase. As such, big pharma can catch a glimpse of how effective their drugs on brain cells before they pour oodles of money into clinical trials. And given that all these neurological disorders are currently incurable, this approach will certainly come in especially handy.
Why does Verge’s AI approach matter?
Taking a drug from discovery to market is currently prohibitively expensive.
In fact, according to Tufts Center for the Study of Drug Development, taking a single drug through the Research & Development phase and the Food & Drug Administration approval phase usually sets back big pharma around $1.3 billion. That’s not to mention that the whole process is extremely tedious and can last up to 12 years.
Against this background, Verge Genomics promises to streamline the entire drug development process with help of machine learning. By doing so, the company can chip a huge chunk off of the $2.6 billion it currently costs pharmaceutical companies to take a single drug to the market.
Nuritas + BASF AI Partnership to develop novel peptides from natural food
Here’s another artificial intelligence collaboration that brings together two titans in their respective fields.
The Irish startup Naritas leverages AI and other novel technologies to facilitate the discovery of new and more robust food and healthy ingredients.
BASF will take advantage of this partnership to develop novel functional peptides derived from natural foods.
In practice, BASF will use Nuritas AI and DNA analysis capabilities to predict, analyze, and validate peptides from natural sources. The main goal of BASF is to discover and deliver to the market peptide-based therapies that’ll help treat conditions like diabetes.
(2) AI is helping big pharma create cures for complex & rare diseases
(a) Tackling Known diseases with no cure, such as ALS, Alzheimer’s, Parkinson etc.
AI can become useful when it comes to monitoring and managing known diseases with no known cure, including Parkinson, Autism, Alzheimer’s disease, and ALS. And there are a few examples that are lighting the way for faster diagnosis and therefore better monitoring and management of these conditions:
For instance, Chinese tech giant, Tencent Holdings, just recently formed a partnership with UK-based Medopad to craft an AI system that will help monitor Parkinson’s patients remotely. This way, the time it takes to carry out a motor function assessment of a patient with Parkinson’s disease will reduce from more than 30 minutes to under 3 minutes.
Another great example is Abbvie and Mission Therapeutics collaboration that’ll develop DUB inhibitors that promise to treat two currently incurable conditions, Parkinson’s and Alzheimer’s diseases. With over 50 million Americans struggling Alzheimer’s and dementia, this AI partnership will bring treatment closer and hope for many.
(b) Better Treatment and Management of Rare diseases
Big pharma traditionally didn’t care about rare diseases because there’s not enough money here. Pharma wants to scale. But with advances in AI, there’s a renewed interest in rare disease treatments. Currently, there are over 350 million people with over 7,000 rare diseases around the world. However, it’s not all gloom and doom for patients with rare diseases as Healx, a UK-based biotech firm, has secured $10 million in Series A funding to use AI to develop innovative drugs for rare conditions. Even better news is that Therachon, another Swiss biotech company that leverage AI to develop drugs for the treatment of rare genetic diseases, has received $60 million in funding.
(3) Drug-Adherence & Dosage
Drug adherence is huge for pharma. In simple terms, to prove the success rate of a drug, a pharma company has participants in clinical studies. If participants don’t follow the trial rules, they are either eliminated from the trials or their negligence could impact the drug results. So having amazing drug adherence is crucial to ANY pharma company out there.
Example 1: Abbvie Collaborates with AiCure in using AI for Drug Adherence:
Abbvie partnered with New York-based AiCure to enhance drug trial vigilance and improve drug adherence. In this collaboration, Abbvie used facial and image recognition algorithm of AiCure mobile SaaS platform to monitor adherence. To be more specific, the patients take a video of themselves swallowing a pill using their smartphones, and the AI-powered platform confirms that indeed the correct person swallowed the right pill. And the results were amazing, improving adherence by up to 90%.
Example 2: Bayer Collaborates with Genpact to use AI to Improve Pharmacovigilance
Genpact’s AI solution has been used severally in clinical trials to change the dosage given to specific patients to optimize the results. In this partnership, Bayer takes advantage of Genpact’s Pharmacovigilance Artificial Intelligence (PVAI) to not only monitor drug adherence but also detect potential side effects much earlier.
(4) Using AI To Make Sense of Clinical Data & to Produce Better Analytics
A vast amount of patient, research, and diagnostic data is gathered every day, but how can big pharma companies make better sense of this information?
Case 1: IBM Watson + Pharma
IBM Watson is an AI platform that proven quite handy for big pharma. When it comes to clinical trial matching, many companies are working with IBM Watson to make sense of better data. These companies include Highlands Oncology Group, Mayo Clinic, Perficient Partners, Medtronic, Illumina, Pfizer, Merck & Co., and Bristol-Myers Squibb, just to name a few.
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Case 2: Apple Research kit + AI
Apple’s Research kit makes it easy for people to enroll in clinical trials and studies without having to go through physical enrollment. It’s a clinical research ecosystem designed around its two flagship products, the iPhone and the Apple Watch. Duke University, for instance, uses patient data collected by these Apple devices and AI-driven facial recognition algorithm to identify children with autism. And that isn’t all; Research kit has made it easy to make better sense of collected health data.
Case 3: Arpeggio Biosciences
Arpeggio Biosciences, a machine learning company, also use AI to aggregate and synthesize information for better data analytics.
(5) Finding More Reliable Patients Faster for Clinical Trials
Although there’s a lot of patient data out there, recruiting the right patients for clinical trials is an arduous process for big pharma. For instance, finding and enrolling ideal candidates can make clinical trials last an average of 7.5 years, costing between $161 million and $2 billion per drug. Unfortunately, 80 percent of clinical trials fail to make deadlines.
With over 18,000 clinical studies currently recruiting candidates in the US, the $65 billion clinical trial market needs an overhaul. Extracting useful data from patients’ records is perhaps the biggest challenge for pharmaceutical companies. Thankfully, that’s where AI and machine learning comes into the picture. Here are two AI tech startups are doing a bang-up job:
Deep 6
Again, clinical trials matching is a big issue for big pharma. Deep 6 uses Natural Language Processing and Deep Learning, two key aspects of Artificial Intelligence, to streamline and automate the whole process. Currently, they are working with TD2 (an oncology CRO) and Cedars-Sinai Medical Center. The startup has already secured $150K in funding.
Antidote
Like Deep 6, antidote leverages NLP to make exclusion/inclusion criteria in clinical studies and trials a breeze. And their AI-powered process is simple. Potential patients are asked to answer a few questions on antidote search-enabled platform. By matching their answer, the platform can deliver a list of recommended trials the patient can enroll in.
Challenges to Adoption of AI in Pharma
While AI has an extensive potential to help redefine the pharmaceutical industry, the adoption itself is not an easy walk in the park.
Here are a few lessons and challenges that pharma companies face while trying to adopt AI:
- The unfamiliarity of the technology – for many pharma companies, AI still seems like a “black box” owing to its newness and esoteric nature.
- Lack of proper IT infrastructure – that’s because most IT applications and infrastructure currently in use weren’t developed or designed with artificial intelligence in mind. Even worse, pharma firms have to spend lots of money to upgrade their IT systems (something which most pharma CEOs don’t want to.)
- Much of the data is in a free text format – that means pharma companies have to go above and beyond to collate and put this data into a form that’s able to be analyzed.
Despite all these limitations, one thing is for certain: AI is already redefining biotech and pharma. And ten years from now, Pharma will simply look at artificial intelligence as a basic, everyday, technology. The only question is how long will pharma executive wait till they jump on the wagon and leverage AI to improve their operational efficiency, outcomes and profits.
Source: https://healthcareweekly.com/artificial-intelligence-in-pharmacology/