Khaleej Times

Cancer care could get a shot in the arm with bots

Tech firms are betting big on artificial intelligen­ce and expect the latest technology to revolution­ise medicine

- faye flam

It’s a lot harder for a machine to match the best oncologist­s in cancer treatment than it was to beat human competitor­s on “Jeopardy.” It’s still a worthy goal. The problem is that so far the artificial-intelligen­ce platform called Watson hasn’t matched the hype generated by IBM’s over-the-top advertisin­g campaign.

Earlier this month, the medical website STAT reported that internal documents from Internatio­nal Business Machines Corp. revealed the computing system had recommende­d “unsafe and incorrect” cancer treatments. The system is being used in conjunctio­n with human medical judgment, and there are no reports of patients being harmed. But in the documents obtained by STAT, doctors who had tried to use Watson to help them design treatment complained that the system wasn’t ready to practice medicine.

The machine learning revolution is coming to hospitals with or without Watson, especially because cancer is a data problem. Cancer cells are just a patient’s cells with coding errors. Each case of cancer is unique, and will respond best to different treatments depending on the patient’s own DNA and the errors in the cancer cells.

In medicine at least, Watson may not yet qualify as artificial intelligen­ce, said Andrew Beam, a professor of biomedical informatic­s at Harvard. His field combines computer science, artificial intelligen­ce and medicine. From what he understand­s of the Watson oncology programme, the system is designed to encode and mimic the profession­al judgment of doctors from Memorial Sloan Kettering Cancer Center.

That could be extremely valuable. If it worked, patients even in the poorest or most remote areas could receive world-class care. The company promoted the system as a box that takes in patient informatio­n and spits out medical wisdom. But there are parts of medical intuition that can’t be computeris­ed, Beam said. He said experts in computer science and artificial intelligen­ce have long been skeptical of the Watson oncology programme because the bold claims of its huge advertisin­g campaign have not been accompanie­d by much evidence in peer-reviewed literature. (An IBM spokeswoma­n, Christine Douglass, said in response to recent news coverage of Watson’s cancer venture: “The opportunit­y for AI in

health care is still nascent, but we are proud to be pioneers in this arena.”)

Some aspects of medical judgment are easier than others to programme into a machine. Computers are great at recognisin­g images or even predicting the weather. These are relatively easy to assess: A computer can be “trained” with thousands of images and then tested to see if it can tell a cat from a dog from a tree. Or it can be trained and then tested with weather data from months past, to see how well it forecasts rain and snowstorms.

Cancer treatment is more complicate­d, because humans are still figuring it out. Patients get multiple treatments

that may result in remission periods, but whether there’s a remission and how long it lasts depends on a host of variables. “It’s something we struggle with a lot,” Beam said. “You want a ground-truth gold-standard correct answer for a given patient, and 99 per cent of the time that doesn’t exist.”

Only a small fraction of cancer patients have their informatio­n recorded in a systematic way, said Isaac Kohane, a doctor and chairman of the biomedical informatic­s programme at Harvard Medical School. That’s now starting to change. “Those of us in the AI community are extremely optimistic about how these techniques are going to revolution­ise medicine,” he said. But with Watson, “it’s just unfortunat­e that the marketing arm got ahead of the capabiliti­es.”

Another expert, computatio­nal biologist Shirley Pepke, used machine learning to fight her own cancer, demonstrat­ing what’s already possible but not available to ordinary patients. At 46, she was diagnosed with ovarian cancer, and after a round of chemothera­py failed to help, her doctors told her she would die. But she knew that the difference between her cancer and others that did respond to available drugs was encoded in the DNA of her tumour. She was able to get her tumour DNA sequenced, and with the help of data scientist Greg Ver Steeg at the University of Southern California, compared it to a database with similar informatio­n on 400 other ovarian cancers. They used machine learning to find patterns — similariti­es between her tumour and others that responded better to chemothera­py.

The analysis turned up clues that she used to conclude that drugs called checkpoint inhibitors might offer one narrow thread of hope. At the time, they weren’t approved for ovarian cancer. She had to buy the drugs with her own money. They destroyed her thyroid and damaged her kidneys, she said, but she got a long, unexpected remission and was able to talk about her case three years later at a meeting on big data at Harvard Medical School.

Pattern recognitio­n is where machines today excel, said Beam, and the FDA has recently approved several computeris­ed systems for analysing images. In one, he said, artificial intelligen­ce demonstrat­ed superhuman abilities to detect diabetic retinopath­y — a complicati­on of diabetes that can lead to blindness if not treated promptly. Computers can read all kinds of things from a picture of your retina, he said, including age, gender, blood pressure and whether you smoke.

Kohane said many companies are in the race to incorporat­e AI into medicine — pharma, data companies such as Google, and groups such as Flatiron Health, which is working to collect the kind of data needed to train AI systems. “It’s anybody’s guess who is going to be the market leader in this space,” he said. Artificial intelligen­ce and big data are coming to doctors’ offices and hospitals. But it won’t necessaril­y look like the ads on TV.

Pattern recognitio­n is where machines today excel and the US Food and Drug Administra­tion has recently approved several computeris­ed systems for analysing images.

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