研究目的
To propose and evaluate a deep learning regression method for directly estimating biomarkers (bone mineral density and percentage emphysema) from CT scans without prior segmentation of structures of interest.
研究成果
The deep learning regression architecture successfully estimates BMD and emphysema biomarkers directly from CT images with high correlation to reference standards (r=0.940 for BMD, r=0.976 for emphysema), demonstrating feasibility and simplification of biomarker extraction. Limitations include 2D data reduction and specific scan types, suggesting future work on 3D processing and transfer learning.
研究不足
The method requires 2D fields of view due to computational constraints, which may not capture full 3D information. It is tested only on non-contrast non-ECG gated thoracic CT scans; performance with intravenous contrast is unknown. The object detector could be improved with deep learning methods.
1:Experimental Design and Method Selection:
The study uses a regression neural network to directly estimate biomarkers from 2D images derived from 3D CT scans, avoiding the traditional two-step segmentation process. The network architecture includes convolutional layers, fully connected layers, and optimization with a momentum optimizer and root mean squared error cost function.
2:Sample Selection and Data Sources:
A database of 9,925 CT scans from the COPDGene study is used, with 7,925 cases for training, 1,000 for validation, and 1,000 for testing. Reference standards for BMD and emphysema are computed using N-Vivo software and Chest Imaging Platform.
3:List of Experimental Equipment and Materials:
CT scanners (multi-detector with at least 16 detector channels), GPUs (Titan Xp donated by NVIDIA), software (TensorFlow library, N-Vivo, Chest Imaging Platform, MedCalc for statistical analysis).
4:Experimental Procedures and Operational Workflow:
Volumetric CT images are pre-processed using an object detector to select 2D slices containing relevant structures. Images are clamped and re-scaled. The neural network is trained, validated, and tested on the dataset.
5:Data Analysis Methods:
Pearson correlation coefficients and Bland-Altman analysis are used to evaluate performance against reference standards, implemented with MedCalc software.
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