Publication | Open Access
Cardiac Phase Detection in Echocardiograms With Densely Gated Recurrent Neural Networks and Global Extrema Loss
87
Citations
31
References
2018
Year
Convolutional Neural NetworkEngineeringMachine LearningAutoencodersCardiac Phase DetectionRecurrent Neural NetworkImage Sequence AnalysisSpeech RecognitionImage AnalysisVideo TransformerCardiologyCnn ArchitecturesGlobal Extrema LossCardiac MechanicRadiologyHealth SciencesCardiovascular ImagingAccurate DetectionMachine VisionLoss FunctionMedical Image ComputingDeep LearningSignal ProcessingComputer VisionDeep Neural Networks
Accurate detection of end-systolic (ES) and end-diastolic (ED) frames in an echocardiographic cine series can be difficult but necessary pre-processing step for the development of automatic systems to measure cardiac parameters. The detection task is challenging due to variations in cardiac anatomy and heart rate often associated with pathological conditions. We formulate this problem as a regression problem and propose several deep learning-based architectures that minimize a novel global extrema structured loss function to localize the ED and ES frames. The proposed architectures integrate convolution neural networks (CNNs)-based image feature extraction model and recurrent neural networks (RNNs) to model temporal dependencies between each frame in a sequence. We explore two CNN architectures: DenseNet and ResNet, and four RNN architectures: long short-term memory, bi-directional LSTM, gated recurrent unit (GRU), and Bi-GRU, and compare the performance of these models. The optimal deep learning model consists of a DenseNet and GRU trained with the proposed loss function. On average, we achieved 0.20 and 1.43 frame mismatch for the ED and ES frames, respectively, which are within reported inter-observer variability for the manual detection of these frames.
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