1. A study design for statistical learning technique to predict radiological progression with an application of idiopathic pulmonary fibrosis using chest CT images
- Author
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Kim, Grace Hyun J, Shi, Yu, Yu, Wenxi, and Wong, Weng Kee
- Subjects
Biomedical and Clinical Sciences ,Clinical Sciences ,Bioengineering ,Lung ,Rare Diseases ,Biomedical Imaging ,Autoimmune Disease ,Respiratory ,Humans ,Idiopathic Pulmonary Fibrosis ,Retrospective Studies ,Tomography ,X-Ray Computed ,Vital Capacity ,Particle swap optimization ,Quantitative lung fibrosis ,Machine learning ,Random forest ,Medical image ,Medical and Health Sciences ,General Clinical Medicine ,Public Health ,Biomedical and clinical sciences ,Health sciences - Abstract
BackgroundIdiopathic pulmonary fibrosis (IPF) is a fatal interstitial lung disease characterized by an unpredictable decline in lung function. Predicting IPF progression from the early changes in lung function tests have known to be a challenge due to acute exacerbation. Although it is unpredictable, the neighboring regions of fibrotic reticulation increase during IPF's progression. With this clinical information, quantitative characteristics of high-resolution computed tomography (HRCT) and a statistical learning paradigm, the aim is to build a model to predict IPF progression.DesignA paired set of anonymized 193 HRCT images from IPF subjects with 6-12 month intervals were collected retrospectively. The study was conducted in two parts: (1) Part A collects the ground truth in small regions of interest (ROIs) with labels of "expected to progress" or "expected to be stable" at baseline HRCT and develop a statistical learning model to classify voxels in the ROIs. (2) Part B uses the voxel-level classifier from Part A to produce whole-lung level scores of a single-scan total probability's (STP) baseline.MethodsUsing annotated ROIs from 71 subjects' HRCT scans in Part A, we applied Quantum Particle Swarm Optimization-Random Forest (QPSO-RF) to build the classifier. Then, 122 subjects' HRCT scans were used to test the prediction. Using Spearman rank correlations and survival analyses, we ascertained STP associations with 6-12 month changes in quantitative lung fibrosis and forced vital capacity.ConclusionThis study can serve as a reference for collecting ground truth, and developing statistical learning techniques to predict progression in medical imaging.
- Published
- 2021