Deep learning-based histotype diagnosis of ovarian carcinoma whole-slide pathology images.
Hossein FarahaniJeffrey BoschmanDavid FarnellAmirali DarbandsariAllen ZhangPouya AhmadvandSteven J M JonesDavid HuntsmanMartin KöbelC Blake GilksNaveena SinghAli BashashatiPublished in: Modern pathology : an official journal of the United States and Canadian Academy of Pathology, Inc (2022)
Ovarian carcinoma has the highest mortality of all female reproductive cancers and current treatment has become histotype-specific. Pathologists diagnose five common histotypes by microscopic examination, however, histotype determination is not straightforward, with only moderate interobserver agreement between general pathologists (Cohen's kappa 0.54-0.67). We hypothesized that machine learning (ML)-based image classification models may be able to recognize ovarian carcinoma histotype sufficiently well that they could aid pathologists in diagnosis. We trained four different artificial intelligence (AI) algorithms based on deep convolutional neural networks to automatically classify hematoxylin and eosin-stained whole slide images. Performance was assessed through cross-validation on the training set (948 slides corresponding to 485 patients), and on an independent test set of 60 patients from another institution. The best-performing model achieved a diagnostic concordance of 81.38% (Cohen's kappa of 0.7378) in our training set, and 80.97% concordance (Cohen's kappa 0.7547) on the external dataset. Eight cases misclassified by ML in the external set were reviewed by two subspecialty pathologists blinded to the diagnoses, molecular and immunophenotype data, and ML-based predictions. Interestingly, in 4 of 8 cases from the external dataset, the expert review pathologists rendered diagnoses, based on blind review of the whole section slides classified by AI, that were in agreement with AI rather than the integrated reference diagnosis. The performance characteristics of our classifiers indicate potential for improved diagnostic performance if used as an adjunct to conventional histopathology.
Keyphrases
- deep learning
- artificial intelligence
- convolutional neural network
- machine learning
- big data
- end stage renal disease
- ejection fraction
- chronic kidney disease
- newly diagnosed
- prognostic factors
- nuclear factor
- cardiovascular disease
- type diabetes
- high resolution
- risk factors
- immune response
- cardiovascular events
- mass spectrometry
- young adults
- coronary artery disease
- risk assessment
- electronic health record
- clinical practice
- data analysis
- single molecule
- optical coherence tomography
- simultaneous determination
- combination therapy
- solid phase extraction
- toll like receptor
- patient reported