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Interobserver variability between experienced and inexperienced observers in the histopathological analysis of Wilms tumors: a pilot study for future algorithmic approach
- Source :
- Diagnostic Pathology, 16(1). BMC, Diagnostic Pathology, 16, Diagnostic Pathology, 16, 1, Diagnostic Pathology, 16:77, Diagnostic Pathology, Vol 16, Iss 1, Pp 1-6 (2021), Diagnostic Pathology
- Publication Year :
- 2021
-
Abstract
- Background Histopathological classification of Wilms tumors determines treatment regimen. Machine learning has been shown to contribute to histopathological classification in various malignancies but requires large numbers of manually annotated images and thus specific pathological knowledge. This study aimed to assess whether trained, inexperienced observers could contribute to reliable annotation of Wilms tumor components for classification performed by machine learning. Methods Four inexperienced observers (medical students) were trained in histopathology of normal kidneys and Wilms tumors by an experienced observer (pediatric pathologist). Twenty randomly selected scanned Wilms tumor-slides (from n = 1472 slides) were annotated, and annotations were independently classified by both the inexperienced observers and two experienced pediatric pathologists. Agreement between the six observers and for each tissue element was measured using kappa statistics (κ). Results Pairwise interobserver agreement between all inexperienced and experienced observers was high (range: 0.845–0.950). The interobserver variability for the different histological elements, including all vital tumor components and therapy-related effects, showed high values for all κ-coefficients (> 0.827). Conclusions Inexperienced observers can be trained to recognize specific histopathological tumor and tissue elements with high interobserver agreement with experienced observers. Nevertheless, supervision by experienced pathologists remains necessary. Results of this study can be used to facilitate more rapid progress for supervised machine learning-based algorithm development in pediatric pathology and beyond.
- Subjects :
- Male
medicine.medical_specialty
Pathology
Students, Medical
Histology
Biopsy
AI (artificial intelligence)
Histopathology
Pilot Projects
Pediatric pathology
Pathology and Forensic Medicine
Cohen's kappa
All institutes and research themes of the Radboud University Medical Center
Predictive Value of Tests
Machine learning
medicine
Humans
RB1-214
Observer Variation
business.industry
Treatment regimen
Research
Histopathological analysis
Reproducibility of Results
Wilms tumor
Wilms' tumor
General Medicine
medicine.disease
Classification
Kidney Neoplasms
Women's cancers Radboud Institute for Health Sciences [Radboudumc 17]
Pathologists
Child, Preschool
Female
Clinical Competence
Radiology
Interobserver variability
business
Normal kidneys
Subjects
Details
- Language :
- English
- ISSN :
- 17461596 and 10529551
- Database :
- OpenAIRE
- Journal :
- Diagnostic Pathology, 16(1). BMC, Diagnostic Pathology, 16, Diagnostic Pathology, 16, 1, Diagnostic Pathology, 16:77, Diagnostic Pathology, Vol 16, Iss 1, Pp 1-6 (2021), Diagnostic Pathology
- Accession number :
- edsair.doi.dedup.....08203a8e59d5660e4cf4cafc3cfb4bbb
- Full Text :
- https://doi.org/10.1186/s13000-021-01136-w