'We want to change lives for the better': U of T researcher probes the mind for signs of cognitive decline
Language, in the form of a speech disorder, is also a lens into the minds of patients suffering from cerebral palsy, Parkinson鈥檚 disease and multiple sclerosis. It is one of the telltale symptoms of Alzheimer鈥檚 disease, and one of the first signs of cognitive decline as a person ages.
As North America鈥檚 population gets older 鈥 by 2030, fully a quarter of Canadians will be over 65 years of age, up from 16 per cent in 2014 鈥 there is a growing need for early detection, accurate diagnosis and improved outcomes in patient care, and a potential for language to aid in all those facets.
That鈥檚 the thinking behind Talk2Me, a web portal developed by University of Toronto and other researchers that gathers linguistic data through an array of cognitive tasks performed by participants. The tool was described in published in PLOS One.
鈥淭alk2Me will help enable a community of people to solve problems related to neuro-degenerative issues, cognitive issues and psychiatry,鈥 says Frank Rudzicz, an associate professor in the department of computer science in the U of T鈥檚 Faculty of Arts & Science.
鈥淚t鈥檚 a common, open platform to help solve these problems.鈥
In a diagnostic setting, the Talk2Me portal, which also runs on a tablet, replaces the typical assessment scenario conducted with pen and paper between a physician and their patient 鈥 a scenario that can be imprecise and vulnerable to bias. Researchers can access the gathered data for their research, or they can use the portal to gather their own data from select participants.
Almost 10 per cent of the North American population has some form of speech disorder, including 7.5 million individuals with disorders caused by cerebral palsy, Parkinson鈥檚 or multiple sclerosis.
Talk2Me was developed by a team that includes: Rudzicz, who is also affiliated with the Vector Institute for Artificial Intelligence and the International Centre for Surgical Safety and the Li Ka Shing Knowledge Institute at St. Michael鈥檚 Hospital; Daniyal Liaqat, a PhD candidate in the department of computer science; and researchers from Carleton University, St. Michael鈥檚 Hospital and the National Research Council.
Talk2Me collects data using tasks similar to those used in standard assessments of cognition, with participants inputting their responses by typing or speaking.
For example, in the picture-description task, participants describe images like the 鈥渃ookie theft鈥 illustration that portrays a woman and two children in a kitchen. The woman is washing dishes while two children take cookies from a cookie jar. In the task, participants typically respond with varying degrees of detail and inference. Some identify the woman as the mother even though the relationship is not explicitly portrayed. Similarly, the motivation of the children is unclear, but some say they are stealing cookies behind their mother鈥檚 back.
In the Winograd schema task, participants are given a statement like: 鈥淭he trophy could not fit into the suitcase because it was too big.鈥 They are then asked: 鈥淲hat was too big, the trophy or the suitcase?鈥 Responding that the suitcase is too big could be a sign that a person鈥檚 executive function 鈥 defined by our set of mental skills 鈥 is impaired. If a person鈥檚 ability to answer properly changed over time, it could be an indication of the onset of age-related dementia.
Other tasks require participants to type as many words as possible that fit a given category 鈥 like 鈥渇ruit.鈥 In another, they are asked to re-tell a short story they have just read. And in the word-colour Stroop task, participants are shown the name of a colour spelled out in coloured letters 鈥 for example, the word 鈥済reen鈥 spelled out in a red typeface. Participants are asked to say the colour of the letters 鈥 in this case, 鈥渞ed.鈥
Different tasks involve different mental processes and the responses contain different features or measureable units of language. Talk2Me鈥檚 natural language processing software analyzes text and audio for these features, which include: the number of words used to describe something; the number of syllables in words; grammatical complexity; the frequency of speech fillers like 鈥渦h鈥 and 鈥渦m鈥; pitch, pauses, loudness and more.
Rudzicz鈥檚 broad focus is to apply natural language processing and machine learning to health care, and Talk2Me is just one way in which he and his collaborators are studying cognitive health through the lens of language.
In 2015, Rudzicz co-founded WinterLight Labs along with computer scientists Katie Fraser, Liam Kaufman and Maria Yancheva. WinterLight is a U of T start-up designing tools to track, screen for and predict the onset of dementia and psychiatric illness. Its first product was a tool that runs on a tablet or computer that, like Talk2Me, gathers input from a patient and analyzes the data to help diagnose and predict Alzheimer鈥檚 disease.
With Talk2Me, and their work at WinterLight and other institutes, Rudzicz and his colleagues exploit the lens of language and continue to sharpen its focus to see more clearly into the human mind.
鈥淚t鈥檚 an exciting time, now, where artificial intelligence can make a real impact in health care,鈥 Rudzicz says. 鈥淎nd my colleagues and I want to have an impact beyond publishing papers and academic output.
鈥淲e want to change lives for the better and improve outcomes.鈥
The research received support from the Natural Sciences and Engineering Research Council and the Canadian Institutes of Health Research.