PHÒNG KHOA HỌC CÔNG NGHỆ - ĐẠI HỌC DUY TÂN

Quốc tế

Le Hoang Son, Tran Manh Tuan, Hamido Fujita, Nilanjan Dey, Amira S. Ashour, Vo Truong Nhu Ngoc, Le Quynh Anh, Chu Dinh Toi. Dental diagnosis from X-Ray images: An expert system based on fuzzy computing. Biomedical Signal Processing and Control, 39, 64-73. (ISI, IF = 2.214)

Ngày: 19/12/2018

Abstract

Background

Computerized medical diagnosis systems from X-Ray images are of great interest to physicians for accurate decision making of possible diseases and treatments. Subclinical disease has no recognizable clinical findings, thus it is desirable to segment the dental X-Ray image into groups and then use soft computing methods to check the possibility of whether or not any disease occurs therein.

Methods

The current work proposed a novel framework called Dental Diagnosis System (DDS) for dental diagnosis based on the hybrid approach of segmentation, classification and decision making. It utilized the best dental image segmentation method based on semi-supervised fuzzy clustering for the segmentation task. A new graph-based clustering algorithm called APC+ for the classification task was proposed. A new decision making procedure was designed to determine the final disease from a group of diseases found from the segments.

Results

The proposed DDS was modeled under the real dental case of Hanoi Medical University, Vietnam including 87 dental images of five popular diseases, namely: root fracture, incluse teeth, decay, missing teeth, and resorption of periodontal bone. The DDS accuracy is 92.74% which is superior to the other methods namely fuzzy inference system (89.67%), fuzzy k-nearest neighbor (80.05%), prim spanning tree (58.46%), kruskal spanning tree (58.46%), and affinity propagation clustering (90.01%).

Conclusion

Empirical results established that superior performance of the DDS to other related methods the findings of the achieved results can assist dental clinicians in their professional work.

 

Keywords

Dental X-Ray image
Decision making
Graph-based clustering
Medical diagnosis
Semi-Supervised fuzzy clustering

  • CỤC SỞ HỮU TRÍ TUỆ VIỆT NAM
  • Quỹ hỗ trợ sáng tạo kỹ thuật Việt Nam
  • Liên hiệp các hội KHKT Đà Nẵng
  • SỞ KHOA HỌC VÀ CÔNG NGHỆ TP ĐÀ NẴNG
  • Sở Khoa học và Công nghệ Quảng Nam
  • TAP CHI KHCN VN
  • THANH TRA BỘ KHCN
  • NGÀY KHOA HỌC VÀ CÔNG NGHỆ
  • BỘ KHOA HỌC VÀ CÔNG NGHỆ
  • Đăng ký thi sơ tuyển