A method using deep learning to discover new predictors of CRT response
from mechanical dyssynchrony on gated SPECT MPI
- URL: http://arxiv.org/abs/2106.01355v1
- Date: Tue, 1 Jun 2021 15:49:31 GMT
- Title: A method using deep learning to discover new predictors of CRT response
from mechanical dyssynchrony on gated SPECT MPI
- Authors: Zhuo He, Xinwei Zhang, Chen Zhao, Zhiyong Qian, Yao Wang, Xiaofeng
Hou, Jiangang Zou, Weihua Zhou
- Abstract summary: The purpose of this study is to extract new LVMD parameters from the phase analysis of gated SPECT MPI.
CRT response was defined as a decrease in left ventricular end-systolic volume.
The new LVMD parameters extracted by autoencoder from the baseline gated SPECT MPI has the potential to improve the prediction of CRT response.
- Score: 8.41618722939145
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Background. Studies have shown that the conventional left ventricular
mechanical dyssynchrony (LVMD) parameters have their own statistical
limitations. The purpose of this study is to extract new LVMD parameters from
the phase analysis of gated SPECT MPI by deep learning to help CRT patient
selection. Methods. One hundred and three patients who underwent rest gated
SPECT MPI were enrolled in this study. CRT response was defined as a decrease
in left ventricular end-systolic volume (LVESV) >= 15% at 6 +- 1 month follow
up. Autoencoder (AE), an unsupervised deep learning method, was trained by the
raw LV systolic phase polar maps to extract new LVMD parameters, called
AE-based LVMD parameters. Correlation analysis was used to explain the
relationships between new parameters with conventional LVMD parameters.
Univariate and multivariate analyses were used to establish a multivariate
model for predicting CRT response. Results. Complete data were obtained in 102
patients, 44.1% of them were classified as CRT responders. AE-based LVMD
parameter was significant in the univariate (OR 1.24, 95% CI 1.07 - 1.44, P =
0.006) and multivariate analyses (OR 1.03, 95% CI 1.01 - 1.06, P = 0.006).
Moreover, it had incremental value over PSD (AUC 0.72 vs. 0.63, LH 8.06, P =
0.005) and PBW (AUC 0.72 vs. 0.64, LH 7.87, P = 0.005), combined with
significant clinic characteristics, including LVEF and gender. Conclusions. The
new LVMD parameters extracted by autoencoder from the baseline gated SPECT MPI
has the potential to improve the prediction of CRT response.
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