Health Tech

How AI Can Alleviate Clinician Burnout, Per a GE HealthCare Exec

Many experts think technology will help mitigate healthcare’s burnout crisis and workforce shortage, but the healthcare industry still has a lot to figure out when it comes to choosing which tools to deploy and getting its workers on board with these new tools, according to a new report from GE HealthCare.

AI, machine learning

Both patients and clinicians would agree that the healthcare system has an abundance of inefficiencies and frustrations. Alyssa Jaffee, partner at 7wireVentures, said it well last month at MedCity News’ INVEST conference — “it’s not that hard to figure out what the problems are — they’re everywhere.”

As healthcare leaders work to transform the industry, there are a few key problems that are in dire need of innovation, such as the siloed nature of care, poor care access, the burden of manual workflows and the scarcity of personalized care. All of these problems are further exacerbated by healthcare’s workforce shortage and burnout crisis — the industry is projected to be short 10 million workers globally by 2030. 

Many experts think technology will help mitigate these sweeping challenges, but the healthcare industry still has a lot to figure out when it comes to choosing which tools to deploy and getting its workers on board with these new tools, according to a report released Tuesday by GE HealthCare.

For healthcare leaders to achieve any success in their efforts to improve and modernize the field, they will need to champion a culture shift to see the healthcare workforce as an asset, the report argued.

For its report, GE HealthCare surveyed 5,500 patients and their families as well as 2,000 clinicians across eight countries. Of the clinician respondents, 42% said they are actively considering leaving healthcare. Clinicians cited poor work-life balance, exorbitant workloads and inadequate compensation as some of their top reasons for having these thoughts.

Another reason that healthcare workers often experience poor job satisfaction is that many feel they are not operating at the top of their licenses, the report revealed. To remedy this, healthcare leaders must deploy technology that delivers on its promises to reduce administrative tasks, better allocate resources and alleviate burnout, the report said.

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Generative AI — which includes large language models like ChatGPT, holds great potential to eliminate workers’ mundane and time-consuming tasks, said Taha Kass-Hout, GE HealthCare’s chief technology officer, in a recent interview.

“Generative AI introduces a different element that’s going to be super important for healthcare — where data is natively multi-modal and there is no need for synthetic data. But curating can be daunting, so generative AI could help tremendously here, where clinicians provide prompts or examples to orient the model — which in healthcare, could be transformational,” he declared.

The use of these AI models is still pretty nascent in healthcare, so the industry hasn’t yet seen the true impact of these technologies. But with the appropriate human supervision, generative AI will reduce clinicians’ burden when it comes to data query and analysis. This way, they can be focused on what really matters — improving patients’ health.

Nearly all of the surveyed clinicians said they want to see patients and their care teams linked together via easy-to-use, effective technology. In order to improve healthcare workers’ job satisfaction and keep them from leaving the industry in droves, this demand must be met, the report said.

Machine learning holds great potential to connect patients to their care teams in a less siloed, more accessible way, Kass-Hout pointed out.

“Leveraging a tool like machine learning — combined with clinical expertise and mindfully improving the integrity of the data — can help us make sense of it all to create a 360-view of a patient’s entire medical history. We can manage data across populations and securely share data to develop more predicative, preventative care responses — and ultimately help clinicians improve patient outcomes,” he explained.

The report showed that clinicians are still on the fence about using machine learning and AI in medical care — especially clinicians in the U.S. Kass-Hout argued that it’s crucial these technologies are integrated in clinicians’ existing workflows to help them understand the data when it’s presented.

“This helps ensure clinicians understand AI’s role in augmenting their work. AI is a utility, a tool – an intelligent assistant,” he said.

To effectively harness the power of big data through AI, the healthcare field needs to “break the black box of AI,” Kass-Hout declared. This means that clinicians must understand what data comprises the AI model they’re using. They have to know about the data points — such as age, gender, lab results, remote monitoring vitals, genetic variants and images of lesion progression — so they can better understand what is influencing the AI output. 

Transparency about the data that influences the AI model, as well as how it can be adjusted is critical to building clinicians’ confidence in AI, Kass-Hout declared.

“As an industry, we need to build clinician understanding of where and how to use AI and when it can be trusted fully versus leaning on other tools and human expertise,” he said.

Photo: Andrzej Wojcicki, Getty Images