When Doctors Need Advice, It Might Not Come From A Fellow Human
This story was produced in collaboration withĢż
Long Island dermatologist Kavita Mariwalla knows well how to treat acne, burns and rashes. But when a patient came in with a potentially disfiguring case of bullous pemphigoidāa rare skin condition that causes large, watery blistersāshe was stumped.Ģż

The medication doctors usually prescribe for the autoimmune disorder wasnāt available. So she logged in to Modernizing Medicine, a Web-based repository of medical information and insights, for help.ĢżĢż
Within seconds, she had the name of another drug that had worked in comparable cases.
āIt gives you access to data, and data is king,ā she said of Modernizing Medicine. āItās been very helpful especially in clinically challenging situations.ā Ģż
The system, one of a growing number of similar tools around the country, lets her tap into the collective knowledge of 4,000 providers and 13 million patients, as well as data on treatments other doctors provide patients with similar profiles. Then it spits out recommendations.ĢżĢż
Tech titans like Google, Facebook, Microsoft and Apple already have made huge investments in artificial intelligence to deliver tailored search results and build virtual personal assistants. That approach is starting to trickle down into health care too, thanks in part to the push under the health reform law to leverage new technologies to improve outcomes and reduce costs, and to the availability of cheaper and more powerful computers.Ģż
Computers canāt replace doctors at the bedside, but they are capable of crunching vast amounts of data and identifying patterns humans canāt. Artificial intelligence can be a tool to take full advantage of electronic medical records, transforming them from mere e-filing cabinets into full-fledged doctorsā aides that can deliver clinically relevant, high-quality data in real time.Ģż
āElectronic health records [are] like large quarries where thereās lots of gold, and weāre just beginning to mine them,ā said Dr. Eric Horvitz,Ģż who is the managing director of Microsoft Research and specializes in applying artificial intelligence in health care settings.
Increasingly, physician practices and hospitals around the country are using supercomputers and homegrown systems to identify patients who might be at risk for kidney failure, cardiac disease or postoperative infections and to prevent hospital readmissions, another key focus of health reform.Ģż
And theyāre starting to combine patientsā individual health dataāincluding genetic informationāwith the wealth of material available in public databases, textbooks and journals to help come up with more personalized treatments.ĢżĢż
For now, the recommendations from Modernizing Medicine are largely based on what is most popular among fellow professionalsāsay, how often doctors on the platform prescribe a given drug or order a particular lab test. But next month, the system will display data on patient outcomes that the company has collected from its subscribers over the past year. Doctors will also be able to double-check the information against the latest clinical research by querying Watson, IBMās artificially intelligent supercomputer.Ģż
ĢżāWhat happens in the real world should be informed by whatās happening in the medical journals,ā said Daniel Cane, CEO of Florida-based Modernizing Medicine. āThat information needs to get to the provider at the point of care.āĢż
āQuick and SeamlessāĢż
Using homegrown systems, doctorsĢż at Vanderbilt University Medical Center in Nashville and St. Judeās Medical Center in MemphisĢż are getting pop-up notificationsānot unlike those on an iPhoneāwithin individual patientsā electronic medical records.Ģż
The alerts tell them, for instance, when a drug might not work for a patient with certain genetic traits. It shows up in bright yellow at the top of a doctorās computer screen ā hard to miss.
āWith a single click, the doctor can prescribe another medication. Itās a very quick and seamless process,ā said Vanderbiltās Dr. Joshua Denny, one of the researchers who developedĢż the system there.
Denny and others used e-medical records on 16,000 patients to help computers predict which patients were likely to need certain medications in the future.Ģż
Take the anti-blood clot medication Plavix. Some people canāt break it down. The Vanderbilt system warns doctors to give patients likely to need the medication a genetic test to see whether they can. If not, it gives physicians suggestions on alternative drugs.
Doctors heed the computerās advice about two-thirds of the time, figuring in for example, the risks associated with the alternative medication.
āThe algorithm is pretty good,ā says Denny, referring to its ability to predict whoās going to need a certain drug. āIt was smarter than my intuition.ā
So far, computers have gotten really good at parsing so-called structured dataāinformation that can easily fit in buckets, or categories. In health care, this data is often stored as billing codes or lab test values.
But this data doesn’t capture patientsā full-range of symptoms or even their treatments.Ģż Images, radiology reports and the notes doctors write about each patient can be more useful. Thatās unstructured data, and computers are less savvy at handling it because it requires making inferences and a certain understanding of context and intent.Ģż
Thatās the stuff humans are really good at doing — and itās what scientists are trying to teach machines to do better.
āComputers are notoriously bad at understanding English,ā said Peter Szolovits, the director of MITās Clinical Decision Making Group. āItās a slow haul, but Iām still optimistic.āĢż
Computers are getting better at reading unstructured information. Suppose a patient says he doesnāt smoke. His doctor checks āno ā in a box–structured data, easily captured by a machine.
But then theĢż doctor notes that the patientās teeth are discolored or that there are nicotine stains on his fingersā a clue that the patient in fact does smoke.Ģż Soon a computer may be able to highlight such discrepancies, bringing to the fore information that otherwise might have been Ģżoverlooked. Ģż
In recent years, universities, tech companies and venture capital firms have invested millions into making computers better at analyzing images and words. Companies are popping up to capitalize on findings in studies suggesting that artificial intelligence can be used to improve care.Ģż
āArtificial intelligence–ultimately thatās where the biggest quality improvements will be made,ā said Euan Thomson, a partner at venture capital firm Khosla Ventures.Ģż
But many challenges remain, experts say. Among them is the tremendous expense and difficulty of gaining access to high-quality data and of developing smart models and training them to pick up patterns.
Most electronic medical record-keeping systems arenāt compatible with each other. The data is often stored in servers at individual clinics or hospitals, making it difficult to build a comprehensive reservoir of medical information.
Moreover, the systems often arenāt hooked up to the Internet and therefore canāt be widely distributed or accessed like other information in the cloud. So, unlike the vast amount of data on Google and Facebook, the information canāt be mined from anywhere by those interested in analyzing it.
From the perspective of privacy advocates, this makes some good sense: A researcherās treasure trove is a hackerās playground.
āItās not the greatest time to talk aboutā health records on the web, given security scandals such as the Edward Snowden leaks and the Heartbleed bug, said Dr. Russ Altman, the director of Stanford Universityās biomedical informatics training program.
Drawing the line
Also standing in the way are concerns about how far computers should encroach on doctorsā turf. As artificial intelligence systems get smarter, experts say, the line between making recommendations and making decisions could become more murky. That could cause regulators to view the systems as a medical devices, subject to the review of the U.S. Food and Drug Administration.
Wary of the time and expense required for FDA approval,Ģż companies engineering the systems ā at least for now– are careful not to describe them as diagnostic tools but rather as information banks.
āThe FDA would be down on them like a ton of bricks because then they would be claiming to practice medicine,ā says MITās Szolovits.
At the moment, he said, the technology isnāt good enough to tell doctors with 100 percent certainty what the best course of treatment for a patient may be. Others agree.
āItās going to be a long road,āĢż said Michael Matheny, a biostatistician at the Vanderbilt School of Medicine.Ģż
Back at her clinic in Long Island, Dr. Mariwalla is thankful for the information that the artificial intelligence system can provide.Ģż
For the patient with that blistering skin condition, she took the machineās suggestion for an alternative medication. The patient has recovered, Mariwalla said.
But sheās careful to add that she made the call herselfābased in part on her conversation with her patient.Ģż
āThatās where medical judgment comes in,ā she said. āYou canāt [just] rely on a system to tell you what to do.ā