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Saturday, September 21, 2024

Revolutionizing Healthcare: How AI-Powered Insights Improve Patient Outcomes for Doctors and Researchers

Introduction

As the healthcare industry continues to evolve, embracing the power of artificial intelligence (AI) is crucial for improving patient outcomes and transforming the way we approach medical research. In this blog post, we’ll explore the potential of AI in healthcare, focusing on how the University Medical Centre Mannheim leverages DataRobot to accelerate clinical research with AI.

This blog is a contribution from our customer University Medical Centre Mannheim, a leading university hospital in Europe. Learn how their team leverages DataRobot to accelerate clinical research with AI.

As physicians and researchers, we’re constantly working to improve quality of life. To do so, we need a holistic, data-driven approach that helps us understand the full impact of a particular treatment. How does a certain treatment impact patient symptoms? What makes their symptoms better or worse?

At University Medical Centre Mannheim, we’re digging into data to answer these questions. But it’s tough for our small teams to balance research with the critically important treatment of our patients. We don’t learn data science in medical school, but it’s an increasingly essential piece of the healthcare puzzle.

Fortunately, user-friendly AI platforms like DataRobot are helping us bridge the gaps between our medical expertise and the data science we need to provide more thoughtful care to our patients.

The Benefits of AI in Healthcare: Findings We Can Trust

What excites me most about AI in healthcare is the potential to uncover new explanations for diseases or breakthrough therapy efficacies that we’re too blind to see using classical statistical methods. Our goal is to uncover new influences on disease progression, predict disease flares, and empower patients to better manage their treatment adherence.

DataRobot gives us exciting new ways to gain insights from our data and augment our team without data scientists.

As clinicians, we can compare and validate models to find those with the highest degree of accuracy. In the Clinical Cooperation Unit – Healthy Skin and Joints, we’ve leveraged AI to evaluate data from a smartphone app, including images and other clinical datasets of anonymized patient data.

Compliance is also critical — from privacy measures around patient information to GDPR regulations that protect and secure sensitive data. When we publish our findings, the most important thing is their reproducibility. That’s why documentation and explainability behind models are so critical. DataRobot makes these normally labor-intensive processes seamless and automatic.

With DataRobot, we trust our findings, knowing that they have been thoroughly trained, retrained, validated, and revalidated. We have a plethora of statistics to show the level of accuracy, which we also need for publishing results. Because of that, I sleep better at night and our centre can make an even greater contribution to the medical research community.

Uncovering Links in Disease Progression

Another example of AI being used in healthcare: we’ve applied AI to several use cases in our dermatology and rheumatology collaboration.

For a recently published study, we used DataRobot to analyze data from clinical research with patients with chronic eczema or psoriasis. The analysis focused on itching, pain, quality of life, and the use of a smartphone monitoring app to track their symptoms. We looked at uncovering new influences on disease progression, trying to predict disease flares or promote patient treatment adherence.

Through our analysis, we learned that nearly 30% of patients see improved quality of life at six months, while another 30% either showed a decline in quality of life or had consistently poor quality of life. Those insights and others will influence treatment decisions. This data is transformative because we can better understand our patients and learn which patients benefit from certain therapies. It informs us on when and how to change patients’ course of treatment if needed.

Now we’re helping other clinics in the medical center uncover insights in their data. With the Department of Internal Medicine, we’ve looked at blood lipids with the goal of predicting heart disease or heart attacks. In just a few weeks/months, we’ve been able to create some pretty accurate models and look forward to publishing our findings in the near future.

Using AI to Accelerate Medical Research

All these findings may have gone undiscovered without DataRobot. Instead, we’ve been able to accelerate research from hours to seconds, even as we continue to see patients and focus on improving their quality of life

AI helps our daily work, and most importantly, it helps patients.

When we first partnered with DataRobot, I told others that this new technology would change the face of the Earth and that they had to learn about it. I’m still saying this today. AI offers enormous benefits to healthcare professionals, and I’m thrilled to see the impact of University Medical Centre Mannheim’s work.

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About the author

Victor Olsavszky, MD

Clinician and Postdoctoral Researcher

Victor Olsavszky is a clinician and postdoctoral researcher at the Clinic for Dermatology at the University Medical Centre and Medical Faculty in Mannheim,Germany. His clinical expertise is in dermatological surgery and plaque psoriasis, while his research areas are vascular biology and AutoML analysis of medical datasets using DataRobot.

Meet Victor Olsavszky, MD

In conclusion, leveraging AI in healthcare has the potential to revolutionize patient care and accelerate medical research. The University Medical Centre Mannheim has successfully adopted DataRobot to analyze complex patient data and uncover new insights that will inform treatment decisions. As we move forward, it is crucial that we prioritize the development of AI solutions that are reliable, secure, and transparent, ensuring that clinicians and patients alike can trust the outcomes.

What inspired the University Medical Centre Mannheim to explore AI in healthcare?

The University Medical Centre Mannheim recognized the potential of AI in healthcare to improve patient outcomes and streamline medical research. With the increasing complexity of patient data, AI offers a powerful tool for healthcare professionals to uncover new insights and develop personalized treatment plans.

How is DataRobot being used at the University Medical Centre Mannheim?

DataRobot is being used to analyze complex patient data and uncover new insights that will inform treatment decisions. The platform’s user-friendly interface and automated machine learning algorithms make it an ideal solution for healthcare professionals who lack extensive data science expertise.

What are the benefits of using DataRobot in healthcare?

DataRobot offers a range of benefits in healthcare, including faster and more accurate analysis of complex patient data, improved patient outcomes, and enhanced clinician productivity. By leveraging DataRobot, healthcare professionals can make data-driven decisions and develop personalized treatment plans for patients.

Can DataRobot be used to predict disease flares?

Yes, DataRobot can be used to predict disease flares. By analyzing large datasets of patient data, DataRobot can identify patterns and predict potential disease flares, allowing clinicians to take proactive measures to prevent or minimize their impact.

Will DataRobot replace human clinicians?

No, DataRobot will not replace human clinicians. Instead, the platform is designed to augment the work of clinicians and enable them to make more informed, data-driven decisions. By leveraging DataRobot’s automation and machine learning capabilities, clinicians can focus on high-value tasks and provide the best possible care for their patients.

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