Feasibility study of ResNet-50 in the distinction of intraoral neural tumors using histopathological images

被引:2
|
作者
dos Santos, Giovanna Calabrese [1 ]
Araujo, Anna Luiza Damaceno [2 ,5 ]
de Amorim, Henrique Alves [1 ]
Giraldo-Roldan, Daniela [3 ]
de Sousa-Neto, Sebastiao Silverio [3 ]
Vargas, Pablo Agustin [3 ]
Kowalski, Luiz Paulo [2 ,4 ]
Santos-Silva, Alan Roger [3 ]
Lopes, Marcio Ajudarte [3 ]
Moraes, Matheus Cardoso [1 ]
机构
[1] Fed Univ Sao Paulo ICT UNIFESP, Inst Sci & Technol, Sao Paulo, Brazil
[2] Univ Sao Paulo, Med Sch, Head & Neck Surg Dept, Sao Paulo, Brazil
[3] Univ Estadual Campinas UNICAMP, Fac Odontol Piracicaba FOP, Dept Diagnost Oral, Piracicaba, SP, Brazil
[4] AC Camargo Canc Ctr, Head & Neck Surg & Otorhinolaryngol Dept, Sao Paulo, Brazil
[5] Sao Paulo Res Fdn FAPESP, Univ Sao Paulo Med Sch FMUSP, Head & Neck Surg Dept, Oral Med & Oral Pathol, Sao Paulo, Brazil
关键词
classification; deep learning; diagnosis; head and neck; oral biopsy; DIAGNOSIS; CLASSIFICATION; UPDATE;
D O I
10.1111/jop.13560
中图分类号
R78 [口腔科学];
学科分类号
1003 ;
摘要
Background: Neural tumors are difficult to distinguish based solely on cellularity and often require immunohistochemical staining to aid in identifying the cell lineage. This article investigates the potential of a Convolutional Neural Network for the histopathological classification of the three most prevalent benign neural tumor types: neurofibroma, perineurioma, and schwannoma. Methods: A model was developed, trained, and evaluated for classification using the ResNet-50 architecture, with a database of 30 whole-slide images stained in hematoxylin and eosin (106, 782 patches were generated from and divided among the training, validation, and testing subsets, with strategies to avoid data leakage). Results: The model achieved an accuracy of 70% (64% normalized), and showed satisfactory results for differentiating two of the three classes, reaching approximately 97% and 77% as true positives for neurofibroma and schwannoma classes, respectively, and only 7% for perineurioma class. The AUROC curves for neurofibroma and schwannoma classes was 0.83%, and 0.74% for perineurioma. However, the specificity rate for the perineurioma class was greater (83%) than in the other two classes (neurofibroma with 61%, and schwannoma with 60%). Conclusion: This investigation demonstrated significant potential for proficient performance with a limitation regarding the perineurioma class (the limited feature variability observed contributed to a lower performance).
引用
收藏
页码:444 / 450
页数:7
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