An Expert System to Diagnose Spinal Disorders
Seyed Mohammad Sadegh Dashti, Seyedeh Fatemeh Dashti

TL;DR
This paper presents an expert system utilizing a hybrid inference algorithm and comprehensive knowledge to improve the speed and accuracy of diagnosing spinal disorders, reducing reliance on invasive manual methods.
Contribution
It introduces a novel hybrid inference algorithm combining backward chaining and uncertainty theory, with integrated expert knowledge for spinal disorder diagnosis.
Findings
Achieved high accuracy in real-world sample analysis
Provided severity and risk assessments for spinal anomalies
Performed comparably to expert diagnoses in medical record evaluations
Abstract
Objective: Until now, traditional invasive approaches have been the only means being leveraged to diagnose spinal disorders. Traditional manual diagnostics require a high workload, and diagnostic errors are likely to occur due to the prolonged work of physicians. In this research, we develop an expert system based on a hybrid inference algorithm and comprehensive integrated knowledge for assisting the experts in the fast and high-quality diagnosis of spinal disorders. Methods: First, for each spinal anomaly, the accurate and integrated knowledge was acquired from related experts and resources. Second, based on probability distributions and dependencies between symptoms of each anomaly, a unique numerical value known as certainty effect value was assigned to each symptom. Third, a new hybrid inference algorithm was designed to obtain excellent performance, which was an incorporation of…
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