An AI app on a tablet helps screen for autism in just 10 minutes by analyzing diverse behaviors, states a new study.
AI-powered tablet app from Duke University accurately screens for autism in children by evaluating various behavioral signs, as per a study published in the journal Nature Medicine (1✔ ✔Trusted Source
Early detection of autism using digital behavioral phenotyping
Go to source). Called SenseToKnow, the app delivers scores that evaluate the quality of the data analyzed, the confidence of its results, and the probability that the child tested is on the autism spectrum.
‘Ten-minute AI app on a tablet accurately helps screen for autism in kids using various behaviors.
#Autism, #AI, #App, #Behavior
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The results are fully interpretable, meaning that they spell out exactly which of the behavioral indicators led to its conclusions and why. This ability gives healthcare providers detailed information on what to look for and consider in children referred for full assessments and intervention.
SenseToKnow’s ease of use and lack of hardware limitations, combined with its demonstrated accuracy across sex, ethnicity, and race, could help eliminate known disparities in early autism diagnosis and intervention by allowing autism screening to take place in any setting, even in the child’s own home.
“Autism is characterized by many different behaviors, and not all children on the spectrum display all of them equally, or at all,” said Geraldine Dawson, director of the Duke Center for Autism and Brain Development, who is a co-senior author on the study.
“This screening tool captures a wide range of behaviors that more accurately reflect the complexity and variability found in autism.”
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It also incorporates an on-screen bubble-popping game to assess motor movement and skills, as delays in motor skills are one of the earliest signs of autism.
The Power of AI in Children’s Health
The app uses almost every sensor in the tablet’s arsenal to measure and characterize the child’s response without the need for any sort of calibration or special equipment. It then uses AI to analyze the child’s responses to predict how likely it is that the child will be diagnosed with autism.Advertisement
“This allows the tool to capture behaviors other screening tests might miss and also report on which biomarkers were of the most interest and most predictive for that particular child.”
The AI tool can provide scores for both the quality of data that the app was able to capture as well as its level of confidence in its analysis —both of which, the researchers believe, are novel features.
“This is an important aspect for a health care provider to know, just like they would need to know if a blood test did not have a big enough sample to produce reliable results,” said Matias Di Martino, assistant research professor of electrical and computer engineering at Duke, who co-led the analysis of the study with Sapiro and Perochon.
In the study, SenseToKnow was administered to 475 children during a pediatric well-child visit, 49 of whom were subsequently diagnosed with autism and 98 with developmental delay without autism.
The app showed 87.8% sensitivity for detecting autism, meaning it correctly identified most children with the condition. Its specificity—the percentage of children without autism who screened negative—was 80.8%.
Overall, participants who screened positive for autism using the app had a 40.6% probability of subsequently being diagnosed with the condition. In comparison, only about 15% of children who screen positive using the standard parent questionnaire are later diagnosed with autism.
Combining the app with the standard questionnaire boosted the probability of a positive screen resulting in later diagnosis to 63.4% -- meaning fewer children are falling through the cracks.
Fast and Accurate Autism Screening
The American Academy of Pediatrics recommends that every toddler be screened for autism at 18 and 24 months. However, concerns have been raised that current screening methods that rely solely on parent reporting are missing children. Girls and children of color, in particular, are often missed.SenseToKnow’s ability to detect autism was similar across children of different sexes, races, and ethnicities.
While the researchers do not envision the digital screening tool replacing parent reporting, they believe it is important to augment the subjective questionnaire with objective tools to help close the gap.
“Just like when any patient goes to their doctor, the doctor listens to them describe what they are experiencing, but they also use thermometers and other objective tests to provide additional information to guide next steps and referrals for further evaluation,” Dawson said. “Such objective tests have been missing for autism.”
The researchers are currently conducting a study in which parents deliver the app at home. They hope that the app will also be useful for measuring a child’s progress within an early intervention program as well as for studying the effectiveness of such programs.
“There is a wide range of expertise amongst health care providers in knowing and being able to recognize all the potential signs of a child being on the autism spectrum,” Dawson said. “This app could help clinicians focus on the areas in which the child needs help, as well as identify areas of strength.”
Reference:
- Early detection of autism using digital behavioral phenotyping - (https://www.nature.com/articles/s41591-023-02574-3)
Source-Eurekalert