89 research outputs found
Doppler assessment of aortic stenosis: a 25-operator study demonstrating why reading the peak velocity is superior to velocity time integral
Aims
Measurements with superior reproducibility are useful clinically and research purposes. Previous reproducibility studies of Doppler assessment of aortic stenosis (AS) have compared only a pair of observers and have not explored the mechanism by which disagreement between operators occurs. Using custom-designed software which stored operatorsâ traces, we investigated the reproducibility of peak and velocity time integral (VTI) measurements across a much larger group of operators and explored the mechanisms by which disagreement arose.
Methods and results
Twenty-five observers reviewed continuous wave (CW) aortic valve (AV) and pulsed wave (PW) left ventricular outflow tract (LVOT) Doppler traces from 20 sequential cases of AS in random order. Each operator unknowingly measured each peak velocity and VTI twice. VTI tracings were stored for comparison. Measuring the peak is much more reproducible than VTI for both PW (coefficient of variation 10.1 vs. 18.0%; Pâ<â0.001) and CW traces (coefficient of variation 4.0 vs. 10.2%; Pâ<â0.001). VTI is inferior because the steep early and late parts of the envelope are difficult to trace reproducibly. Dimensionless index improves reproducibility because operators tended to consistently over-read or under-read on LVOT and AV traces from the same patient (coefficient of variation 9.3 vs. 17.1%; Pâ<â0.001).
Conclusion
It is far more reproducible to measure the peak of a Doppler trace than the VTI, a strategy that reduces measurement variance by approximately six-fold. Peak measurements are superior to VTI because tracing the steep slopes in the early and late part of the VTI envelope is difficult to achieve reproducibly
Laser Doppler flow for the hemodynamic differentiation of tachycardia
Background: Implantable cardioverter defibrillators (ICDs) offer effective therapy for the prevention of sudden cardiac death (SCD) due to ventricular arrhythmias. However, inappropriate shocks have detrimental effects on survival and quality of life. The addition of hemodynamic monitoring may be useful in discriminating clinically important ventricular arrhythmias. Objective: In this study, we assess the ability of laser Doppler flowmetry to assess the hemodynamic effect of paced atrial and ventricular arrhythmias using mean arterial blood pressure as the reference. Methods: In this acute human study in patients undergoing an elective electrophysiological study, laser Doppler flowmetry, arterial blood pressure, and surface ECG were acquired during highârate atrial and ventricular pacing to simulate supraventricular and ventricular tachycardias. Results: Arterial blood pressure and laser Doppler flow signals correlated well during atrial and ventricular pacing (rho = 0.694, p < .001). The hemodynamic impairment detected by both methods was greater during ventricular pacing than atrial pacing (â1.0% vs. 19.0%, p < .001). Laser Doppler flowmetry performed better than rate alone to identify hemodynamic impairments. Conclusion: In this acute study, laser Doppler flowmetry tissue perfusion served as a good surrogate measure for arterial pressure, which could be incorporated into future ICDs
Automated analysis of mitral inflow doppler using convolutional neural networks
Doppler echocardiography is commonly used for functional assessment of heart valves such as mitral valve. Currently, the measurements are made manually which is a laborious and subjective process. We have demonstrated the feasibility of using neural networks to fully automate the process of mitral valve inflow measurements. Experiments show that the automated system yields comparable performance to the experts
Influence of Loss Function on Left Ventricular Volume and Ejection Fraction Estimation in Deep Neural Networks
Quantification of the left ventricle shape is crucial in evaluating cardiac function from 2D echocardiographic images. This study investigates the applicability of established loss
functions when optimising the U-Net model for 2D echocardiographic left ventricular segmentation. Our results indicate loss functions are a significant component for optimal left ventricle volume measurements when established segmentation metrics could be imperceptible
Automated multi-beat tissue Doppler echocardiography analysis using deep neural networks
Tissue Doppler imaging is an essential echocardiographic technique for the non-invasive assessment of myocardial blood velocity. Image acquisition and interpretation are performed by trained operators who visually localise landmarks representing Doppler peak velocities. Current clinical guidelines recommend averaging measurements over several heartbeats. However, this manual process is both time-consuming and disruptive to workflow. An automated system for accurate beat isolation and landmark identification would be highly desirable. A dataset of tissue Doppler images was annotated by three cardiologist experts, providing a gold standard and allowing for observer variability comparisons. Deep neural networks were trained for fully automated predictions on multiple heartbeats and tested on tissue Doppler strips of arbitrary length. Automated measurements of peak Doppler velocities show good BlandâAltman agreement (average standard deviation of 0.40 cm/s) with consensus expert values; less than the inter-observer variability (0.65 cm/s). Performance is akin to individual experts (standard deviation of 0.40 to 0.75 cm/s). Our approach allows forâ>â26 times as many heartbeats to be analysed, compared to a manual approach. The proposed automated models can accurately and reliably make measurements on tissue Doppler images spanning several heartbeats, with performance indistinguishable from that of human experts, but with significantly shorter processing time
Multibeat echocardiographic phase detection using deep neural networks
Background
Accurate identification of end-diastolic and end-systolic frames in echocardiographic cine loops is important, yet challenging, for human experts. Manual frame selection is subject to uncertainty, affecting crucial clinical measurements, such as myocardial strain. Therefore, the ability to automatically detect frames of interest is highly desirable.
Methods
We have developed deep neural networks, trained and tested on multi-centre patient data, for the accurate identification of end-diastolic and end-systolic frames in apical four-chamber 2D multibeat cine loop recordings of arbitrary length. Seven experienced cardiologist experts independently labelled the frames of interest, thereby providing infallible annotations, allowing for observer variability measurements.
Results
When compared with the ground-truth, our model shows an average frame difference of â0.09 ± 1.10 and 0.11 ± 1.29 frames for end-diastolic and end-systolic frames, respectively. When applied to patient datasets from a different clinical site, to which the model was blind during its development, average frame differences of â1.34 ± 3.27 and â0.31 ± 3.37 frames were obtained for both frames of interest. All detection errors fall within the range of inter-observer variability: [-0.87, â5.51]±[2.29, 4.26] and [-0.97, â3.46]±[3.67, 4.68] for ED and ES events, respectively.
Conclusions
The proposed automated model can identify multiple end-systolic and end-diastolic frames in echocardiographic videos of arbitrary length with performance indistinguishable from that of human experts, but with significantly shorter processing time
High-Throughput Precision Phenotyping of Left Ventricular Hypertrophy with Cardiovascular Deep Learning
Left ventricular hypertrophy (LVH) results from chronic remodeling caused by
a broad range of systemic and cardiovascular disease including hypertension,
aortic stenosis, hypertrophic cardiomyopathy, and cardiac amyloidosis. Early
detection and characterization of LVH can significantly impact patient care but
is limited by under-recognition of hypertrophy, measurement error and
variability, and difficulty differentiating etiologies of LVH. To overcome this
challenge, we present EchoNet-LVH - a deep learning workflow that automatically
quantifies ventricular hypertrophy with precision equal to human experts and
predicts etiology of LVH. Trained on 28,201 echocardiogram videos, our model
accurately measures intraventricular wall thickness (mean absolute error [MAE]
1.4mm, 95% CI 1.2-1.5mm), left ventricular diameter (MAE 2.4mm, 95% CI
2.2-2.6mm), and posterior wall thickness (MAE 1.2mm, 95% CI 1.1-1.3mm) and
classifies cardiac amyloidosis (area under the curve of 0.83) and hypertrophic
cardiomyopathy (AUC 0.98) from other etiologies of LVH. In external datasets
from independent domestic and international healthcare systems, EchoNet-LVH
accurately quantified ventricular parameters (R2 of 0.96 and 0.90 respectively)
and detected cardiac amyloidosis (AUC 0.79) and hypertrophic cardiomyopathy
(AUC 0.89) on the domestic external validation site. Leveraging measurements
across multiple heart beats, our model can more accurately identify subtle
changes in LV geometry and its causal etiologies. Compared to human experts,
EchoNet-LVH is fully automated, allowing for reproducible, precise
measurements, and lays the foundation for precision diagnosis of cardiac
hypertrophy. As a resource to promote further innovation, we also make publicly
available a large dataset of 23,212 annotated echocardiogram videos
Neural architecture search of echocardiography view classifiers
Purpose: Echocardiography is the most commonly used modality for assessing the heart in
clinical practice. In an echocardiographic exam, an ultrasound probe samples the heart from
different orientations and positions, thereby creating different viewpoints for assessing the
cardiac function. The determination of the probe viewpoint forms an essential step in automatic
echocardiographic image analysis.
Approach: In this study, convolutional neural networks are used for the automated identification
of 14 different anatomical echocardiographic views (larger than any previous study) in a dataset
of 8732 videos acquired from 374 patients. Differentiable architecture search approach was
utilized to design small neural network architectures for rapid inference while maintaining high
accuracy. The impact of the image quality and resolution, size of the training dataset, and number
of echocardiographic view classes on the efficacy of the models were also investigated.
Results: In contrast to the deeper classification architectures, the proposed models had significantly lower number of trainable parameters (up to 99.9% reduction), achieved comparable
classification performance (accuracy 88.4% to 96%, precision 87.8% to 95.2%, recall 87.1%
to 95.1%) and real-time performance with inference time per image of 3.6 to 12.6 ms.
Conclusion: Compared with the standard classification neural network architectures, the proposed models are faster and achieve comparable classification performance. They also require
less training data. Such models can be used for real-time detection of the standard views
Improving ultrasound video classification: an evaluation of novel deep learning methods in echocardiography
Echocardiography is the commonest medical ultrasound examination, but automated interpretation is challenging and hinges on correct recognition of the âviewâ (imaging plane and orientation). Current state-of-the-art methods for identifying the view computationally involve 2-dimensional convolutional neural networks (CNNs), but these merely classify individual frames of a video in isolation, and ignore information describing the movement of structures throughout the cardiac cycle. Here we explore the efficacy of novel CNN architectures, including time-distributed networks and two-stream networks, which are inspired by advances in human action recognition. We demonstrate that these new architectures more than halve the error rate of traditional CNNs from 8.1% to 3.9%. These advances in accuracy may be due to these networksâ ability to track the movement of specific structures such as heart valves throughout the cardiac cycle. Finally, we show the accuracies of these new state-of-the-art networks are approaching expert agreement (3.6% discordance), with a similar pattern of discordance between views
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