Guwahati, July 10: Researchers from the Indian Institute of Technology-Guwahati (IIT-G) have developed an artificial intelligence (AI)-based model to predict knee osteoarthritis severity from X-ray images.
The research team has developed a deep learning (DL)-based framework, namely OsteoHRNet, that automatically assesses the knee osteoarthritis (OA) severity level of the disease and assists medical practitioners remotely for a more accurate diagnosis.
Notably, knee osteoarthritis is the most common musculoskeletal disorder in the world and has a prevalence of 28 percent in India.
There is reportedly no possible cure for knee OA except total joint replacement at an advanced stage hence an early diagnosis is essential for pain management and behavioral corrections. MRI and CT scans provide a 3-D image of the knee joints for effective diagnosis of knee OA but their availability is limited and expensive. For routine diagnosis, X-ray imaging is very effective and more economically feasible.
The research was carried out by Rohit Kumar Jain, an M.Tech Data Science student (now graduated) under the joint supervision of Arijit Sur and Palash Ghosh. The team also includes former Ph.D students.
They have been working to enhance automatic knee osteoarthritis detection from X-ray images or radiographs to assist clinical evaluation.
Speaking about the knee OA prediction model, Palash Ghosh, assistant professor, department of mathematics, IIT-G said, “Compared to others, our model can pinpoint the area which is medically most important to decide the severity level of knee osteoarthritis thus helping medical practitioners detect the disease accurately at an early stage.”
The proposed approach is not a direct plug-and-play of popular deep models. The AI-based model uses an efficient Deep Convolutional Neural Network (CNN) – an algorithm from image recognition.
This model predicts the knee OA severity according to the World Health Organisation (WHO)-approved Kellgren and Lawrence (KL) grading scale that ranges from grade 0 (low severity) to 4 (high severity).
On the further application of this work Arijit Sur from the department of computer science and engineering, IIT-G said, “Although simple, the proposed model may be a good starting point for analysing inexpensive radiographic modalities such as X-rays. Our group is currently focusing on how efficient deep learning-based models can be designed so that we can work on inexpensive and easily available modalities such as very low-resolution radiographic images or even photos taken from radiographic plates by a smartphone”
The team is also working to reconfigure these models in such a way that they can be deployed in resource-constrained devices so that medical professionals can easily get an initial but accurate guess for the diagnosis.
This work has the potential to mitigate the severe shortage of skilled personnel in this field, especially in rural India.
The research has been accepted for publication in the journal, Multimedia Tools and Applications.
IANS