Publication | Open Access
Using Artificial Intelligence to Detect, Classify, and Objectively Score Severity of Rodent Cardiomyopathy
21
Citations
10
References
2020
Year
Artificial IntelligenceConvolutional Neural NetworkHeart FailureEngineeringIntelligent DiagnosticsDiagnosisPathologyDiagnostic ImagingComputational MedicineImage AnalysisPattern RecognitionPcm LesionsBiostatisticsAi HealthcareCardiologyRadiologyCardiomyopathyMedical ImagingRodent CardiomyopathyPcm FeaturesDeep LearningMedical Image ComputingRadiomicsScore SeverityCardiovascular DiseaseBiomedical ImagingComputer-aided DiagnosisMedicineMedical Image AnalysisDeep Learning Algorithms
Rodent progressive cardiomyopathy (PCM) encompasses a constellation of microscopic findings commonly seen as a spontaneous background change in rat and mouse hearts. Primary histologic features of PCM include varying degrees of cardiomyocyte degeneration/necrosis, mononuclear cell infiltration, and fibrosis. Mineralization can also occur. Cardiotoxicity may increase the incidence and severity of PCM, and toxicity-related morphologic changes can overlap with those of PCM. Consequently, sensitive and consistent detection and quantification of PCM features are needed to help differentiate spontaneous from test article-related findings. To address this, we developed a computer-assisted image analysis algorithm, facilitated by a fully convolutional network deep learning technique, to detect and quantify the microscopic features of PCM (degeneration/necrosis, fibrosis, mononuclear cell infiltration, mineralization) in rat heart histologic sections. The trained algorithm achieved high values for accuracy, intersection over union, and dice coefficient for each feature. Further, there was a strong positive correlation between the percentage area of the heart predicted to have PCM lesions by the algorithm and the median severity grade assigned by a panel of veterinary toxicologic pathologists following light microscopic evaluation. By providing objective and sensitive quantification of the microscopic features of PCM, deep learning algorithms could assist pathologists in discerning cardiotoxicity-associated changes.
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