Machine Learning in the Detection of Dental Cyst, Tumor, and Abscess Lesions

Author:

Kumar Vyshiali Sivaram1,R Pradeep Kumar.1,Yadalam Pradeep Kumar1,Anegundi Raghavendra Vamsi1,Shrivastava Deepti2,Alfurhud Ahmed Ata3,Almaktoom Ibrahem T.2,Alftaikhah Sultan Abdulkareem Ali2,Alsharari Ahmed Hamoud L.2,Srivast Kumar Chandan2

Affiliation:

1. Saveetha Dental College, Saveetha University

2. Jouf University

3. Queen Mary University of London

Abstract

Abstract Background and Objective: Dental panoramic radiographs are utilized in computer-aided image analysis, which detects ab-normal tissue masses by analyzing the produced image capacity to recognize patterns of intensity fluctuations. This is done to reduce the need for invasive biopsies for arriving to a diagnosis. The aim of the current study was to examine and compare the accuracy of several texture analysis techniques, such as Grey Level Run Length Matrix (GLRLM), Grey Level Co-occurrence Matrix (GLCM), and wavelet analysis in recognizing dental cyst, tumor, and abscess lesions. Materials & Methods The current retrospective study retrieved a total of 172 dental panoramic radiographs with lesion including dental cysts, tumors, or abscess. Radiographs that failed to meet technical criteria for diagnostic quality (such as significant overlap of teeth, a diffuse image, or distortion) were excluded from the sample. The methodology adopted in the study comprised of five stages. At first, the radiographs are improved, and the area of interest was segmented manually. A variety of feature extraction techniques, such GLCM, GLRLM, and the wavelet analysis were used to gather information from the area of interest. Later, the lesions were classified as a cyst, tumor, abscess, or using a support vector machine (SVM) classifier. Eventually, the data was transferred into a Microsoft Excel spreadsheet and SPSS (version 21) was used to conduct the statistical analysis. Initially descriptive statistics were computed. For inferential analysis, statistical significance was determined by a p value < 0.05. The sensitivity, specificity, and accuracy were used to find the significant difference between assessed and actual diagnosis. Results The findings demonstrate that 98% accuracy was achieved using GLCM, 91% accuracy using Wavelet analysis & 95% accuracy using GLRLM in distinguishing between dental cyst, tumor, and abscess lesions. The AUC number indicates that GLCM achieves a high degree of accuracy. The results achieved excellent accuracy (98%) using GLCM. Conclusion The GLCM features can be used for further research. After improving the performance and training, it can support routine histological diagnosis and can assist the clinicians in arriving at accurate and spontaneous treatment plans.

Publisher

Research Square Platform LLC

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