91原创

Transparency is vital for AI usage in health care, patient-provider relationship, OHIO researchers find

91原创 Professors Gaurav Bansal and Vic Matta have found that addressing transparency concerns is the most critical way to foster trust in primary care providers and improve patient outcomes.

Alex Semancik | June 8, 2026

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Among the top artificial intelligence companies, the current race is ultimately to build better, faster and more accurate algorithms. Artificial intelligence (AI) has become commonplace in every sector including health care, and an increasing number of primary care physicians are turning to AI for .

Even with all of the useful applications artificial intelligence has as a health care tool, many patients are still skeptical of its use. A 2023 revealed that 57% of respondents believed AI in health care would negatively impact the patient-provider relationship, mainly due to mistrust stemming from AI's lack of social presence, black-box nature, bias and opacity.

As AI continues to reshape the health care landscape and become more prominent at health care facilities, three 91原创 researchers have found that in primary care providers and improve patient outcomes.

Accuracy vs. transparency in AI health care

91原创 Professors of Analytics and Information Systems Gaurav Bansal, Ph.D. and Vic Matta Ph.D., along with recent OHIO alumnus Kevin Diaz-Ordonez, began investigating how AI in health care may impact the patient-provider relationship among primary care physicians in fall of 2024. Their research mainly focused on comparing the relative importance of AI accuracy and transparency in health care settings. 

Bansal said their objective was to understand which factor鈥攁ccuracy or transparency鈥攊s more important and how it impacts trust in a primary care providers in a diagnostic setting. 

鈥淭his research intends to define transparency in the context of health care and AI use,鈥 said Bansal. 鈥淚t is not about the transparency of the AI algorithm and how it was developed and how it works. It is the transparency of the process, and how AI is being used in a health care clinic. For example, a doctor discussing how they are using AI, or how much they rely on AI for a diagnosis.鈥

91原创 Professor of Analytics and Information Systems Gaurav Bansal, Ph.D
91原创 Analytics and Information Systems Chair and O'Bleness Professor of Analytics and Information Systems Gaurav Bansal, Ph.D

Bansal, Matta and Diaz-Ordonez hypothesized that transparency would lead to trust in the health care provider and trust in any AI being used by the provider鈥攖he same logic as a patient trusting a prescription given to them due to their trust in their physician who prescribed it. This hypothesis was grounded in medical literature.

鈥淲e argue that trust is what leads to positive attitudes towards the use of AI by the health care provider, and that leads to satisfaction in the healthcare process,鈥 said Bansal. 鈥淪atisfaction has been argued to be the key construct in health care settings, because if patients are not satisfied with their health care settings that could lead to adverse outcomes. So, satisfaction, trust and attitude are all important here.鈥

They also examined how accuracy impacts these relationships. Accuracy was used as a moderating role in relation to transparency. Their assumption was that if people trust a health care professional, then they will trust that physician鈥檚 AI usage. And, if the AI that is being used is accurate, the patient will trust the physician and their AI usage even more.

The results of their study are where things really get interesting.

91原创 Professor of Analytics and Information Systems Vic Matta, Ph.D.
91原创 Professor of Analytics and Information Systems Vic Matta, Ph.D.
The hypothesis
  • If a physician is more transparent with their use of AI, then a patient鈥檚 trust will increase
  • AND if that AI being used is accurate, then that trust will further increase

The importance of AI transparency

To examine their hypothesis, the three investigators enlisted respondents to participate in a scenario-based survey experiment on Mechanical Turk (MTurk), a crowdsourcing marketplace. Data from 655 MTurk respondents was used to gather a sample. Bansal, Matta and Diaz-Ordonez used attention checks and asked follow-up questions to ensure their data was reliable and valid.

As anticipated, transparency was found to be vital to the patient-provider relationship in relation to AI usage, and thus their key hypothesis was supported. Transparency in AI usage was important, and it led to higher trust in the health care provider who used it, as well as higher trust in the AI as used by their doctors. Essentially, the researchers found it to be true that if you trust the provider, then you trust the tools they use. 

What was more surprising was the reaction to the role of accuracy in AI diagnoses and the impact on the patient-provider relationship. When transparency increased, trust increased鈥攁s expected, but when AI was more accurate, trust actually went down or stagnated. Bansal has a few potential explanations for why this is the case.

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(Image courtesy of Adobe Stock)
(Image courtesy of Adobe Stock)

鈥淧eople are afraid that if AI becomes too accurate, doctors might not use their own critical judgment and it will be outsourced to AI,鈥 he said. 鈥淓specially primary care. I think that fear is being captured here.鈥

Matta said these findings have the potential to change the whole game in terms of how we think about the relationship between artificial intelligence and trust.

鈥淭he reason that this is not just a big deal, but a huge deal is because it鈥檚 contrary to beliefs that accuracy improves trust,鈥 said Matta. 鈥淭he implications are massive. Without this discovery, we would all be afraid that doctors are going to be replaced by AI, but because of this study we can say 鈥榥ot so fast.鈥欌

These findings were presented at the May 2025 in Oklahoma. This year鈥檚 MWAIS 2026 conference was held at 91原创. The study is currently available through a conference proceeding, and Bansal and Matta are working on making it a journal publication, as well.

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(Image courtesy of Adobe Stock)
(Image courtesy of Adobe Stock)

The results are being corroborated. Matta and Bansal have seen many recent papers argue that AI-generated outputs are less valuable than those that are human-generated. Bansal agrees that these results essential reshape the common understanding of how accuracy in AI is perceived but says how these findings are interpreted is very important.

鈥淲e have to be careful how we interpret these findings because they鈥檙e in the context of transparency and accuracy,鈥 Bansal explained. 鈥淲e should not generalize that accuracy is not important in AI health care. In the context of transparency and accuracy, transparency is more important, and if transparency is present, accuracy plays a lesser role.鈥

Bansal and Matta also want to make it clear that just because accuracy in AI wasn鈥檛 important in primary care contexts, doesn鈥檛 mean it won鈥檛 be important in other health care settings. They are hoping to expand this research to specialized care to compare these findings to another health care area. 

鈥淥ne study is never enough,鈥 said Bansal. 鈥淲e have found something counter-intuitive that means we need to do more research.鈥

Discover Research Grant and OHIO impact

This research on the impact of AI health care tools on patient-provider relationships and satisfaction of care is a prime example of collaborative research environment that exists at 91原创. 

The undertaking itself began as Diaz-Ordonez鈥檚 undergraduate project. Bansal and Matta said that the  OHIO鈥檚 Discover Research Grant helped them to engage Diaz-Ordonez, who was then an undergraduate student majoring in Management Information Systems. The Discover Research Grant is part of OHIO鈥檚 Dynamic Strategy under the Discover Pillar, and it supports travel to conferences in order to present valuable research.

鈥淥ur Discover Grant was designed to promote research that aligns with our University Discover Pillar,鈥 said Bansal. 鈥淗ealth care and healthy aging are one of those focus areas. This was very helpful in deciding what domain to choose. We definitely want to attribute the health care inspiration to that grant.鈥

The future of AI in health care

If there is one thing to take away from this study, Bansal hopes it is the realization that transparency is extremely important in the realm of artificial intelligence鈥攁nd especially as it relates to AI use in health care environments. He insists that we must have more discussions about transparency in our society.

鈥淎I will never be fully accurate,鈥 Bansal explained. 鈥淭here will always be an accuracy problem because it is built on historical data, but you can perfect transparency in your processes.鈥

Bansal and Matta were both surprised at how little literature and research existed about the importance of transparent AI usage in general. 

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Medical professionals use AI on their laptops.
(Image courtesy of Adobe Stock)

鈥淎ll the big AI companies are focused on algorithms, speed, building big data centers, making the AI faster,鈥 said Bansal 鈥淵ou can do all that, but our expertise in the college of business are processes and governance. We are advocating for better processes and transparency. This is one area that nobody is talking about. Everyone is focused on this mad race to build bigger and better AI algorithms. Our research is saying to focus on processes, governance and transparency. Don鈥檛 forget them.鈥

Bansal further emphasized this point when he grabbed a jacket in his office and read the size, material and washing instruction information off the tag. 

鈥淭here is more transparency in a $20 piece of clothing than AI,鈥 he said.

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A doctor holds an AI-generated medical symbol.
(Image courtesy of Adobe Stock)