PwC predicts that healthcare costs will go up by 7% in 2024. This increase is primarily attributed to healthcare workers experiencing burnout, the subsequent workforce shortage, disputes between payers and providers, and inflation. To ensure efficient patient care without incurring excessive operational costs, the industry is exploring innovative technologies, such as generative AI in healthcare.

Accenture reports that 40% of healthcare providers’ working hours can be enhanced with AI, while a recent Forbes article suggests that this technology can spare the US medical sector at least $200 billion in annual expenses.

Generative AI in healthcare uses machine learning algorithms to analyze unstructured data, such as patient health records, medical images, audio recordings of consultations, etc., and produce new content similar to what it has been trained on.

In this article, our generative AI development company will explain how the technology can support healthcare organizations.

Generative AI use cases in healthcare

  1. Facilitating medical training and simulation
  2. Assisting in clinical diagnosis
  3. Contributing to drug development
  4. Automating administrative tasks
  5. Generating synthetic medical data

Facilitating medical training and simulations

Generative AI in healthcare can come up with realistic simulations replicating a large variety of health conditions, allowing medical students and professionals to practice in a risk-free, controlled environment. AI can generate patient models with different diseases or help simulate a surgery or another medical procedure.

Traditional training involves pre-programmed scenarios, which are restrictive. AI, on the other hand, can quickly generate patient cases and adapt in real-time responding to the decisions the trainees make. This creates a more challenging and authentic learning experience.

Real-life example

The University of Michigan built a generative AI in healthcare model that can produce various scenarios for simulating sepsis treatment.

The University of Pennsylvania deployed a generative AI model to simulate the spread of COVID-19 and test different interventions. This helped the researchers evaluate the potential impact of social distancing and vaccination on the virus.

Assisting in clinical diagnosis

Here is how generative AI for healthcare can contribute to diagnostics:

Real-life examples

A team of researchers experimented with Generative Adversarial Network (GAN) models to extract and enhance features in low-quality medical scans, transforming them into high-resolution images. This approach was tested on brain MRI scans, dermoscopy, retinal fundoscopy, and cardiac ultrasound images, displaying a superior accuracy rate in anomaly detection after image enhancement.

In another example, Google’s AI-powered Med-Palm 2 was trained on the MedQA dataset and achieved an 85% accuracy rate while answering relevant medical questions. Google admits that the algorithm still needs improvement, but it’s a strong start for generative AI as a diagnostics assistant.

Contributing to drug development

According to the Congressional Budget Office, the process of new drug development costs on average $1 billion to $2 billion, which also includes failed drugs. Fortunately, there is evidence that AI has the potential to cut the time needed to design and screen new drugs almost by half, saving the pharma industry around $26 billion in annual expenses in the process. Additionally, this technology can reduce costs associated with clinical trials by $28 billion per year.

Pharmaceutical companies can deploy generative AI in healthcare to speed up drug discovery by:

You can find more information on the role of AI in drug discovery and how it facilitates clinical trials on our blog.

Real-life examples

The rise of strategic partnerships between biotech companies and AI startups is an early sign of generative AI taking over the pharmaceutical industry.

Just recently, Recursion Pharmaceuticals acquired two Canadian AI startups for $88 million. One of them, Valence, is known for its generative AI capabilities and will work on designing drug candidates based on small and noisy datasets that are not sufficient for traditional drug discovery methods.

Another interesting example comes from the University of Toronto. A research team built a generative AI system, ProteinSGM, that can generate novel realistic proteins after studying imagery representations of existing protein structures. This tool can produce proteins at a high rate, and then another AI model, OmegaFold, is deployed to evaluate the resulting proteins’ potential. Researchers reported that most of the novel generated sequences fold into real protein structures.

Automating administrative tasks

This is one of the most prominent generative AI use cases in healthcare. Studies show that burnout rate among physicians in the US has reached a whopping 62%. Doctors suffering from this condition are more likely to be involved in incidents endangering their patients and are more inclined to alcohol abuse and having suicidal thoughts.

Fortunately, generative AI in healthcare can partially alleviate the burden off the doctors’ shoulders by streamlining administrative tasks. It can simultaneously reduce costs associated with administration, which, according to HealthAffairs, accounts for 15%-30% of overall healthcare spending. Here is what generative AI can do:

Real-life example

Navina, a medical AI startup, built a generative AI assistant that helps doctors tackle administrative duties more efficiently. This tool can access patient data, including EHRs, insurance claims, and scanned documents, give status updates, recommend care options, and answer doctors’ questions. It can even generate structured documents, such as referral letters and progress notes.

Navina has already scored $44 million in funding, which indicates a strong interest from the medical community.

Generating synthetic medical data

Medical research relies on accessing vast amounts of data on different health conditions. This data is painfully lacking, especially when it comes to rare diseases. Also, such data is expensive to gather, and its usage and sharing are governed by privacy laws.

Generative AI in medicine can produce synthetic data samples that can augment real-life health datasets and are not subject to privacy regulations, as the healthcare data doesn’t belong to particular individuals. Artificial intelligence can generate EHR data, scans, etc.

Real-life examples

A team of German researchers built an AI-powered model, GANerAid, to generate synthetic patient data for clinical trials. This model is based on the GAN approach and can produce medical data with the desired properties even if the original training dataset was limited in size.

Another team of scientists experimented with generative AI to synthesize electronic health records. The researchers were motivated by restrictive data privacy regulations and the inability to effectively share patient data between hospitals. They built the EHR-M-GAN model that could derive heterogeneous, mixed-type EHR data (meaning it contains both continuous and discrete values) that realistically represents patient trajectories.

Ethical considerations and challenges of generative AI in healthcare

Even though tech and consulting giants continue to invest in AI, we can also see how prominent AI experts, including Tesla CEO Elon Musk and OpenAI CEO Sam Altman, warn of the risks associated with the technology. So, which challenges does generative AI bring to healthcare?

Ready to enhance your healthcare practice with generative AI?

Generative AI algorithms are becoming increasingly powerful. Robert Pearl, a clinical professor at Stanford University School of Medicine, said:

“ChatGPT is doubling in power every six months to a year. In five years, it’s going to be 30 times more powerful than it is today. In 10 years, it will be 1,000 times more powerful. What exists today is like a toy. In next-generation tools, it’s estimated there will be a trillion parameters, which is interestingly the approximate number of connections in the human brain.”

AI can be a powerful ally, but if misused, it can cause significant damage. Healthcare organizations need to approach this technology with caution. If you are considering deploying AI-based solutions for healthcare, here are three tips to get you started:

Want to benefit from generative AI but not sure how to proceed? Drop ITRex a line! We will help you prepare your data, implement the tool, and integrate it into your operations.

Also published here.