Radiomics in bone pathology of the jaws

被引:15
作者
Martins Santos, Glaucia Nize [1 ]
Cardoso da Silva, Helbert Eustaquio [1 ]
Leite Ossege, Filipe Eduard [2 ]
de Souza Figueiredo, Paulo Tadeu [1 ]
Melo, Nilce de Santos [1 ]
Stefani, Cristine Miron [1 ]
Leite, Andre Ferreira [1 ]
机构
[1] Univ Brasilia, Fac Hlth Sci, Dent Dept, Brasilia, DF, Brazil
[2] Univ Brasilia, Fac Technol, Mech Engn Dept, Brasilia, DF, Brazil
关键词
Radiomics; Jaws; Texture analysis; Bone; Systematic Review; TEXTURE ANALYSIS; CT IMAGES; OSTEOPOROSIS; DIAGNOSIS; CLASSIFICATION; CHALLENGES; LESIONS; CYSTS; HEAD;
D O I
10.1259/dmfr.20220225
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Objective: To define which are and how the radiomics features of jawbone pathologies are extracted for diagnosis, predicting prognosis and therapeutic response. Methods: A comprehensive literature search was conducted using eight databases and gray literature. Two independent observers rated these articles according to exclusion and inclusion criteria. 23 papers were included to assess the radiomics features related to jawbone pathologies. Included studies were evaluated by using JBI Critical Appraisal Checklist for Analytical Results: Agnostic features were mined from periapical, dental panoramic radiographs, cone beam CT, CT and MRI images of six different jawbone alterations. The most frequent features mined were texture-, shape- and intensity- based features. Only 13 studies described the machine learning step, and the best results were obtained with Support Vector Machine and random forest classifier. For osteoporosis diagnosis and classification, filtering, shape- based and Tamura texture features showed the best performance. For temporomandibular joint Gray Level Size Zone Matrix (GLSZM), first- order statistics analysis and shape- based analysis showed the best results. Considering odontogenic and non- odontogenic cysts and tumors, contourlet and SPHARM features, first- order statistical features, GLRLM, GLCM had better indexes. For odontogenic cysts and granulomas, first- order statistical analysis showed better classification results. Conclusions: GLCM was the most frequent feature, followed by first- order statistics, and GLRLM features. No study reported predicting response, prognosis or therapeutic response, but instead diseases diagnosis or classification. Although the lack of standardization in the radiomics workflow of the included studies, texture analysis showed potential to contribute to radiologists' reports, decreasing the subjectivity and leading to personalized healthcare.
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页数:19
相关论文
共 51 条
[1]   Automated classification of maxillofacial cysts in cone beam CT images using contourlet transformation and Spherical Harmonics [J].
Abdolali, Fatemeh ;
Zoroofi, Reza Aghaeizadeh ;
Otake, Yoshito ;
Sato, Yoshinobu .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2017, 139 :197-207
[2]  
Abu Marar RF, 2020, ENG TECHNOL APPL SCI, V10, P6027
[3]   From big data analysis to personalized medicine for all: challenges and opportunities [J].
Alyass, Akram ;
Turcotte, Michelle ;
Meyre, David .
BMC MEDICAL GENOMICS, 2015, 8
[4]   A comprehensive study on feature types for osteoporosis classification in dental panoramic radiographs [J].
Alzubaidi, Mohammad A. ;
Otoom, Mwaffaq .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2020, 188
[5]  
Baumhoer D, 2017, SURG PATHOL CLIN
[6]   Quantitative bone imaging biomarkers to diagnose temporomandibular joint osteoarthritis [J].
Bianchi, J. ;
Goncalves, J. R. ;
Ruellas, A. C. de Oliveira ;
Ashman, L. M. ;
Vimort, J-B ;
Yatabe, M. ;
Paniagua, B. ;
Hernandez, P. ;
Benavides, E. ;
Soki, F. N. ;
Ioshida, M. ;
Cevidanes, L. H. S. .
INTERNATIONAL JOURNAL OF ORAL AND MAXILLOFACIAL SURGERY, 2021, 50 (02) :227-235
[7]   Osteoarthritis of the Temporomandibular Joint can be diagnosed earlier using biomarkers and machine learning [J].
Bianchi, Jonas ;
de Oliveira Ruellas, Antonio Carlos ;
Goncalves, Joao Roberto ;
Paniagua, Beatriz ;
Prieto, Juan Carlos ;
Styner, Martin ;
Li, Tengfei ;
Zhu, Hongtu ;
Sugai, James ;
Giannobile, William ;
Benavides, Erika ;
Soki, Fabiana ;
Yatabe, Marilia ;
Ashman, Lawrence ;
Walker, David ;
Soroushmehr, Reza ;
Najarian, Kayvan ;
Cevidanes, Lucia Helena Soares .
SCIENTIFIC REPORTS, 2020, 10 (01)
[8]   A tutorial on Support Vector Machines for pattern recognition [J].
Burges, CJC .
DATA MINING AND KNOWLEDGE DISCOVERY, 1998, 2 (02) :121-167
[9]   Can we trust the calculation of texture indices of CT images? A phantom study [J].
Caramella, Caroline ;
Allorant, Adrien ;
Orlhac, Fanny ;
Bidault, Francois ;
Asselain, Bernard ;
Ammari, Samy ;
Jaranowski, Patricia ;
Moussier, Aurelie ;
Balleyguier, Corinne ;
Lassau, Nathalie ;
Pitre-Champagnat, Stephanie .
MEDICAL PHYSICS, 2018, 45 (04) :1529-1536
[10]   False Discovery Rates in PET and CT Studies with Texture Features: A Systematic Review [J].
Chalkidou, Anastasia ;
O'Doherty, Michael J. ;
Marsden, Paul K. .
PLOS ONE, 2015, 10 (05)