Deep Learning Predicts Lung Cancer Treatment Response from Serial Medical Imaging
Dana-Farber Brigham Cancer Center · Maastricht University Medical Centre
Abstract
Deep learning models using time series scans were significantly predictive of survival and cancer-specific outcomes (progression, distant metastases, and local-regional recurrence). Model performance was enhanced with each additional follow-up scan into the CNN model (e.g., 2-year overall survival: AUC = 0.74, P < 0.05). The models stratified patients into low and high mortality risk groups, which were significantly associated with overall survival [HR = 6.16; 95% confidence interval (CI), 2.17–17.44; P < 0.001]. The model also significantly predicted pathologic response in dataset B (P = 0.016).
We demonstrate that deep learning can integrate imaging scans at multiple timepoints to improve clinical outcome predictions. AI-based noninvasive radiomics biomarkers can have a significant impact in the clinic given their low cost and minimal requirements for human input.
Citation impact
- FWCI
- 48.45
- Percentile
- 100%
- References
- 57
Authors
8- YXYiwen Xu
Dana-Farber Brigham Cancer Center
- AHAhmed Hosny
Maastricht University Medical Centre, Dana-Farber Brigham Cancer Center
- RZRoman Zeleznik
Maastricht University Medical Centre, Dana-Farber Brigham Cancer Center
- CPChintan Parmar
Dana-Farber Brigham Cancer Center
- TCThibaud Coroller
Dana-Farber Brigham Cancer Center
Topics & keywords
- Medicine
- Lung cancer
- Deep learning
- Confidence interval
- Radiomics
- Convolutional neural network
- Medical imaging
- Stage (stratigraphy)
- Good health and well-being