Artificial Intelligence-Based Opportunistic Coronary Calcium Screening in the Veterans Affairs National Healthcare System
- URL: http://arxiv.org/abs/2409.09968v1
- Date: Mon, 16 Sep 2024 03:59:01 GMT
- Title: Artificial Intelligence-Based Opportunistic Coronary Calcium Screening in the Veterans Affairs National Healthcare System
- Authors: Raffi Hagopian, Timothy Strebel, Simon Bernatz, Gregory A Myers, Erik Offerman, Eric Zuniga, Cy Y Kim, Angie T Ng, James A Iwaz, Sunny P Singh, Evan P Carey, Michael J Kim, R Spencer Schaefer, Jeannie Yu, Amilcare Gentili, Hugo JWL Aerts,
- Abstract summary: Coronary artery calcium (CAC) is highly predictive of cardiovascular events.
A deep learning algorithm was developed to quantify CAC on non-contrast, non-gated CT scans.
Non-gated AI-CAC was predictive of 10-year all-cause mortality.
- Score: 0.8655790044415911
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Coronary artery calcium (CAC) is highly predictive of cardiovascular events. While millions of chest CT scans are performed annually in the United States, CAC is not routinely quantified from scans done for non-cardiac purposes. A deep learning algorithm was developed using 446 expert segmentations to automatically quantify CAC on non-contrast, non-gated CT scans (AI-CAC). Our study differs from prior works as we leverage imaging data across the Veterans Affairs national healthcare system, from 98 medical centers, capturing extensive heterogeneity in imaging protocols, scanners, and patients. AI-CAC performance on non-gated scans was compared against clinical standard ECG-gated CAC scoring. Non-gated AI-CAC differentiated zero vs. non-zero and less than 100 vs. 100 or greater Agatston scores with accuracies of 89.4% (F1 0.93) and 87.3% (F1 0.89), respectively, in 795 patients with paired gated scans within a year of a non-gated CT scan. Non-gated AI-CAC was predictive of 10-year all-cause mortality (CAC 0 vs. >400 group: 25.4% vs. 60.2%, Cox HR 3.49, p < 0.005), and composite first-time stroke, MI, or death (CAC 0 vs. >400 group: 33.5% vs. 63.8%, Cox HR 3.00, p < 0.005). In a screening dataset of 8,052 patients with low-dose lung cancer-screening CTs (LDCT), 3,091/8,052 (38.4%) individuals had AI-CAC >400. Four cardiologists qualitatively reviewed LDCT images from a random sample of >400 AI-CAC patients and verified that 527/531 (99.2%) would benefit from lipid-lowering therapy. To the best of our knowledge, this is the first non-gated CT CAC algorithm developed across a national healthcare system, on multiple imaging protocols, without filtering intra-cardiac hardware, and compared against a strong gated CT reference. We report superior performance relative to previous CAC algorithms evaluated against paired gated scans that included patients with intra-cardiac hardware.
Related papers
- Integrating Deep Learning with Fundus and Optical Coherence Tomography for Cardiovascular Disease Prediction [47.7045293755736]
Early identification of patients at risk of cardiovascular diseases (CVD) is crucial for effective preventive care, reducing healthcare burden, and improving patients' quality of life.
This study demonstrates the potential of retinal optical coherence tomography ( OCT) imaging combined with fundus photographs for identifying future adverse cardiac events.
We propose a novel binary classification network based on a Multi-channel Variational Autoencoder (MCVAE), which learns a latent embedding of patients' fundus and OCT images to classify individuals into two groups: those likely to develop CVD in the future and those who are not.
arXiv Detail & Related papers (2024-10-18T12:37:51Z) - Detection of subclinical atherosclerosis by image-based deep learning on chest x-ray [86.38767955626179]
Deep-learning algorithm to predict coronary artery calcium (CAC) score was developed on 460 chest x-ray.
The diagnostic accuracy of the AICAC model assessed by the area under the curve (AUC) was the primary outcome.
arXiv Detail & Related papers (2024-03-27T16:56:14Z) - Automated Plaque Detection and Agatston Score Estimation on Non-Contrast
CT Scans: A Multicenter Study [2.4476474544077225]
The purpose of this study is to validate an automated cardiac plaque detection model using a 3D multiclass nnU-Net.
In this work we demonstrate how the nnU-Net segmentation pipeline may be adapted to detect plaques in the coronary arteries and valves.
With a linear correction, nnU-Net deep learning methods may also accurately estimate Agatston scores on chest non-contrast CT scans.
arXiv Detail & Related papers (2024-02-14T20:41:37Z) - Automated Coronary Calcium Scoring using U-Net Models through
Semi-supervised Learning on Non-Gated CT Scans [0.0]
In real time coronary artery calcification scores are only calculated on gated CT scans, not nongated CT scans.
Model was used to predict on nongated CT scans, performing with a mean absolute error (MAE) of 674.19 and bucket classification accuracy of 41%.
New cropped nongated scans were able to closely resemble gated CT scans, improving the performance by 91% in MAE (62.38) and 23% in accuracy.
arXiv Detail & Related papers (2022-06-13T20:02:02Z) - Classification of COVID-19 Patients with their Severity Level from Chest
CT Scans using Transfer Learning [3.667495151642095]
The rapid increment in cases of COVID-19 has led to an increase in demand for hospital beds and other medical equipment.
Keeping this in mind, we share our research in detecting COVID-19 as well as assessing its severity using chest-CT scans and Deep Learning pre-trained models.
Our model can therefore help radiologists detect COVID-19 and the extent of its severity.
arXiv Detail & Related papers (2022-05-27T06:22:09Z) - Generative Models for Reproducible Coronary Calcium Scoring [3.1746159467221253]
Coronary artery calcium (CAC) score is a strong and independent predictor of coronary heart disease (CHD) events.
CAC scoring suffers from limited interscan due to clinical definition requiring application of a fixed intensity level threshold for segmentation of calcifications.
We propose a CAC method that does not require a threshold for segmentation of CAC.
arXiv Detail & Related papers (2022-05-24T10:59:32Z) - COVID-Net CT-2: Enhanced Deep Neural Networks for Detection of COVID-19
from Chest CT Images Through Bigger, More Diverse Learning [70.92379567261304]
We introduce COVID-Net CT-2, enhanced deep neural networks for COVID-19 detection from chest CT images.
We leverage explainability to investigate the decision-making behaviour of COVID-Net CT-2.
Results are promising and suggest the strong potential of deep neural networks as an effective tool for computer-aided COVID-19 assessment.
arXiv Detail & Related papers (2021-01-19T03:04:09Z) - COVIDNet-CT: A Tailored Deep Convolutional Neural Network Design for
Detection of COVID-19 Cases from Chest CT Images [75.74756992992147]
We introduce COVIDNet-CT, a deep convolutional neural network architecture that is tailored for detection of COVID-19 cases from chest CT images.
We also introduce COVIDx-CT, a benchmark CT image dataset derived from CT imaging data collected by the China National Center for Bioinformation.
arXiv Detail & Related papers (2020-09-08T15:49:55Z) - JCS: An Explainable COVID-19 Diagnosis System by Joint Classification
and Segmentation [95.57532063232198]
coronavirus disease 2019 (COVID-19) has caused a pandemic disease in over 200 countries.
To control the infection, identifying and separating the infected people is the most crucial step.
This paper develops a novel Joint Classification and (JCS) system to perform real-time and explainable COVID-19 chest CT diagnosis.
arXiv Detail & Related papers (2020-04-15T12:30:40Z) - Automated Quantification of CT Patterns Associated with COVID-19 from
Chest CT [48.785596536318884]
The proposed method takes as input a non-contrasted chest CT and segments the lesions, lungs, and lobes in three dimensions.
The method outputs two combined measures of the severity of lung and lobe involvement, quantifying both the extent of COVID-19 abnormalities and presence of high opacities.
Evaluation of the algorithm is reported on CTs of 200 participants (100 COVID-19 confirmed patients and 100 healthy controls) from institutions from Canada, Europe and the United States.
arXiv Detail & Related papers (2020-04-02T21:49:14Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.