The prevalence of concussions in sports is well known. So, too, is the challenge clinicians and others face when they have to decide when an athlete can return to the game after a head injury. While most athletes recover from a sports-related concussion in about seven to 10 days, some need more time. This predicament makes managing the treatment of sports-related concussions very complicated.
A novel solution
The researchers implemented a supervised machine learning-based modeling approach to predict recovery time of concussion-related symptoms within seven, 14 and 28 days. They examined the efficacy of 10 classification algorithms in building the prediction models, using the dataset representing three years of concussions suffered by these high school student-athletes in football and the other contact sports.
With the dataset showing that the most prevalent reported sports-related concussion symptom was a headache (94.9 percent), followed by dizziness (74.3 percent), and then difficulty concentrating (61.1 percent), the symptom-based prediction models demonstrated practical clinical value in estimating sport-related concussion recovery time. This information can be especially valuable to health care providers in concussion case management and patient care. Beyond clinical decision support, this insight also can help with planning academic accommodations and team needs.
New clinical tool to manage sports-related concussions
“We have introduced a cutting-edge approach and new clinical tool to manage sports-related concussions; which will measurably improve with more and more inclusive data;” said Taghi Khoshgoftaar. “Our supervised machine learning method has demonstrated efficacy and warrants further exploration.” The researchers noted that total number of symptoms; sensitivity to noise or light, difficulty concentrating; insomnia, and balance issues have priority predictive value; indicating their likely important contributing role and utility in their models.
In contrast, they did not find amnesia, hyperexcitability; loss of consciousness, or tinnitus to be relevant candidates for measurably facilitating top-performing models. “It is really important to be able to promptly identify; those athletes who are going to need more time to recover after incurring their concussion;” said Bergeron. “The ability to predict recovery time using machine learning will help to augment an effective stratified approach to care. This also can help with realistic expectations of the student-athlete; as well as provide important insight and perspective for parents, coaches and teachers.”
“This novel application of supervised machine learning to sport concussion epidemiology; is an important step in advancing the approach in clinically managing a complex condition,” said Stella Batalama; Ph.D., dean of FAU’s College of Engineering and Computer Science in conclusion. “Supervised machine learning has the potential to more effectively reveal meaningful patterns; and potentially unique vital insights into the complex inter-dependent array of clinical determinants; in anticipating concussion symptom recovery as well as myriad other aspects in managing concussions.”