Advancing Brain Metastases Detection in T1-Weighted Contrast-Enhanced 3D MRI Using Noisy Student-Based Training.
Engin DikiciXuan V NguyenMatthew T BigelowJohn L RyuLuciano M PrevedelloPublished in: Diagnostics (Basel, Switzerland) (2022)
The detection of brain metastases (BM) in their early stages could have a positive impact on the outcome of cancer patients. The authors previously developed a framework for detecting small BM (with diameters of <15 mm) in T1-weighted contrast-enhanced 3D magnetic resonance images (T1c). This study aimed to advance the framework with a noisy-student-based self-training strategy to use a large corpus of unlabeled T1c data. Accordingly, a sensitivity-based noisy-student learning approach was formulated to provide high BM detection sensitivity with a reduced count of false positives. This paper (1) proposes student/teacher convolutional neural network architectures, (2) presents data and model noising mechanisms, and (3) introduces a novel pseudo-labeling strategy factoring in the sensitivity constraint. The evaluation was performed using 217 labeled and 1247 unlabeled exams via two-fold cross-validation. The framework utilizing only the labeled exams produced 9.23 false positives for 90% BM detection sensitivity, whereas the one using the introduced learning strategy led to ~9% reduction in false detections (i.e., 8.44). Significant reductions in false positives (>10%) were also observed in reduced labeled data scenarios (using 50% and 75% of labeled data). The results suggest that the introduced strategy could be utilized in existing medical detection applications with access to unlabeled datasets to elevate their performances.
Keyphrases
- contrast enhanced
- magnetic resonance
- magnetic resonance imaging
- diffusion weighted
- brain metastases
- computed tomography
- convolutional neural network
- loop mediated isothermal amplification
- diffusion weighted imaging
- small cell lung cancer
- real time pcr
- electronic health record
- label free
- big data
- deep learning
- pet imaging
- healthcare
- climate change
- machine learning
- medical education
- dual energy
- quantum dots