Automated Segmentation of Light-Sheet Fluorescent Imaging to Characterize Experimental Doxorubicin-Induced Cardiac Injury and Repair.
René R Sevag PackardKyung In BaekTyler BeebeNelson JenYichen DingFeng ShiPeng FeiBong Jin KangPo-Heng ChenJonathan GauMichael ChenJonathan Y TangYu-Huan ShihYong-He DingDebiao LiXiaolei XuTzung K HsiaiPublished in: Scientific reports (2017)
This study sought to develop an automated segmentation approach based on histogram analysis of raw axial images acquired by light-sheet fluorescent imaging (LSFI) to establish rapid reconstruction of the 3-D zebrafish cardiac architecture in response to doxorubicin-induced injury and repair. Input images underwent a 4-step automated image segmentation process consisting of stationary noise removal, histogram equalization, adaptive thresholding, and image fusion followed by 3-D reconstruction. We applied this method to 3-month old zebrafish injected intraperitoneally with doxorubicin followed by LSFI at 3, 30, and 60 days post-injection. We observed an initial decrease in myocardial and endocardial cavity volumes at day 3, followed by ventricular remodeling at day 30, and recovery at day 60 (P < 0.05, n = 7-19). Doxorubicin-injected fish developed ventricular diastolic dysfunction and worsening global cardiac function evidenced by elevated E/A ratios and myocardial performance indexes quantified by pulsed-wave Doppler ultrasound at day 30, followed by normalization at day 60 (P < 0.05, n = 9-20). Treatment with the γ-secretase inhibitor, DAPT, to inhibit cleavage and release of Notch Intracellular Domain (NICD) blocked cardiac architectural regeneration and restoration of ventricular function at day 60 (P < 0.05, n = 6-14). Our approach provides a high-throughput model with translational implications for drug discovery and genetic modifiers of chemotherapy-induced cardiomyopathy.
Keyphrases
- deep learning
- left ventricular
- convolutional neural network
- cardiac resynchronization therapy
- heart failure
- high throughput
- drug delivery
- drug discovery
- cancer therapy
- machine learning
- high glucose
- diabetic rats
- high resolution
- chemotherapy induced
- stem cells
- quantum dots
- living cells
- oxidative stress
- magnetic resonance imaging
- diffusion weighted imaging
- ultrasound guided
- antiplatelet therapy
- contrast enhanced
- gene expression
- dna methylation
- copy number
- endothelial cells
- cell proliferation
- computed tomography
- acute coronary syndrome
- transcription factor
- genome wide
- reactive oxygen species
- magnetic resonance
- single molecule
- fluorescent probe
- atrial fibrillation
- stress induced
- combination therapy