Introduction
With
the advent of artificial intelligence (AI), every aspect of humans and business is
facing the impact. AI is steadily changing how industries work. The pharmaceutical sector is no different; AI
is bringing new ways to solve old problems. From speeding up drug discovery to
making clinical trials more efficient, AI is creating real improvements. But
it's not all smooth. There are issues around data safety, regulations, and the
role of human workers. In this blog, I will try to explain how AI is affecting
pharma today, with insights from experts.
Pharma Is Slow, Expensive, and Risky
One
of the biggest issues with the pharma industry, which is also the core also is that developing
a new drug is not easy. On average, it takes around 10-15 years and costs more
than billions to bring one drug to market. Secondly, most drugs fail during the
clinical trial phase. Only about 10% of drugs that enter clinical trials
actually get approved.
Other
operational issues include:
- Delays in
patient recruitment for trials
- Long and
manual processes in research and manufacturing
- Difficulty
in predicting how patients will respond to treatments
- Rising costs
with little room for error
These
challenges make the industry slow to innovate and unable to meet urgent health
needs quickly. One of the biggest examples we have seen is during the COVID-19 pandemic.
Where countries faced shortages of the COVID-19 vaccine.
The Consequences
When
drug development is slow, patients suffer. During the COVID-19 pandemic,
traditional methods wouldn't have delivered vaccines in time. Quick turnaround
was possible only because companies used AI tools to speed things up.
- Patients
with rare diseases often go untreated for years due to limited research.
- Pharmaceutical
companies spend millions on failed trials.
- Delays in
drug approval can lead to higher mortality and public mistrust.
On
top of that, the amount of data in healthcare is growing fast. But making sense
of it without AI is nearly impossible. Manual analysis isn't enough when you're
dealing with millions of patient records, genetic data, and clinical notes.
AI
helps make sense of large data sets, find patterns, and make predictions. It
doesn't replace scientists or doctors, but it supports them in making better,
faster decisions.
Let's
explore where AI is already making a difference.
1. Drug Discovery
What
AI Does?
- Analyses
data from past research to predict which compounds might work
- Simulates
how new drugs will behave in the body
- Reduces the
need for trial-and-error in labs
Example:
- Benevolent AI helped identify baricitinib, an
arthritis drug, as a potential COVID-19 treatment. This was achieved in
just a few days using AI algorithms.
- DeepMind's
AlphaFold predicted
the 3D structure of over 200 million proteins, a task that would take
humans years.
Impact: Drug discovery timelines are cut by years,
and costs are reduced by up to 70% in some cases.
2. Clinical Trials
What
AI Does?
- Matches
eligible patients to clinical trials using electronic health records
(EHRs)
- Predicts
which patients are more likely to respond to a drug
- Flag potential
safety issues early
Example:
- Pfizer used IBM Watson to match
patients to oncology trials. This reduced the time taken for recruitment
significantly.
Data
Point: Around 80% of
clinical trials are delayed due to problems with recruitment. AI can cut this
delay by up to 30%.
3. Personalised Treatment
What
AI Does?
- Analyses
genetic, lifestyle, and environmental data to recommend treatments
- Helps
doctors make more informed decisions
Example:
- Tempus uses AI to provide oncologists
with data-driven insights for treating cancer patients based on molecular
and clinical data.
Impact: Improves treatment effectiveness and reduces
the risk of adverse reactions.
4. Manufacturing and Supply Chain
What
AI Does:
- Predicts
equipment failures before they happen
- Optimises
supply and demand planning
Example:
- Novartis has been using AI to monitor its
production lines, reducing waste and improving efficiency.
Data
Point: Predictive
maintenance using AI can reduce unplanned outages by up to 50%.
The Advantages: Why AI Makes Sense
- Faster time
to market: AI tools
cut months or years from R&D timelines.
- Better
decision-making: AI helps
identify patterns that humans might miss.
- Improved
accuracy: Reduces
human error in data analysis and prediction.
- Cost savings: Automates tasks that would
require large teams.
- Scalability: AI systems can handle growing
amounts of data without losing speed or accuracy.
It's Not All Smooth Sailing
Despite
the progress, using AI in pharma isn’t without its issues.
1. Data Privacy and Security
Patient
data is sensitive. AI needs large datasets to work well, but this increases the
risk of breaches.
Concerns:
- Compliance
with HIPAA, GDPR, and other data protection laws
- Need for
anonymisation and encryption
- Who owns the
data? Patients or companies?
2. Regulatory Hurdles
AI
tools must be approved by regulators before use. But current frameworks were
built for traditional methods, not algorithms.
Challenges:
- Lack of
clear guidelines
- Need for
"explainable AI" that regulators can understand
3. Trust and Human Expertise
Doctors
and researchers may hesitate to rely on AI, especially when they don’t
understand how it works.
Issues:
- Black-box
models offer predictions but not explanations
- Need for
training to help staff use AI tools properly
4. Bias in AI Systems
If
the data used to train AI is biased, the results will be too. This can lead to
wrong or harmful outcomes.
Fix: Regular audits and diverse data sets are
necessary to avoid these issues.
Expert Insights: What the Leaders Say
Eric
Topol, MD, says,
"AI won't replace doctors, but doctors who use AI will replace those who
don't."
Vas
Narasimhan, CEO of
Novartis, calls AI "essential for the future of medicine."
FDA
Commissioner Robert Califf has spoken about
the need to modernize regulation to keep up with AI's growth in healthcare.
What's Next for AI in Pharma?
1. Smarter, Explainable AI
Future
AI tools will be designed to explain how they work, building trust among users
and regulators.
2. Wider Use in Developing Countries
AI
could help bring modern medicine to areas with fewer resources by speeding up
diagnosis and treatment.
3. Closer Collaboration with Regulators
Regulatory
bodies are starting to work more closely with companies to create safe and
effective AI tools.
4. AI-First Biotech Startups
New
companies are being built around AI from day one, giving them an edge in speed
and innovation.
Conclusion
AI
is not going to solve all the problems that industry is facing; However, it's a
strong tool that can help fix some of the biggest problems in pharma. By accelerating drug discovery, enhancing trials, and delivering personalised care, AI yields tangible, measurable benefits. However, it also brings new responsibilities, including protecting data and ensuring fair use. Companies that embrace AI
thoughtfully and responsibly will be the ones that lead the way.
The
future of pharma isn't just digital. It's smarter, faster, and more connected.
And AI is at the center of that change.