
Wen-Hui Chen
· Language Instructor in ChineseVerifiedHarvard University · East Asian Languages and Civilizations
Active 1997–2024
Research topics
- Artificial Intelligence
- Medicine
- Nuclear medicine
- Radiology
- Internal medicine
Selected publications
Journal of Cachexia Sarcopenia and Muscle · 2020 · 136 citations
- Artificial Intelligence
- Medicine
- Nuclear medicine
BACKGROUND: Body composition from computed tomography (CT) scans is associated with cancer outcomes including surgical complications, chemotoxicity, and survival. Most studies manually segment CT scans, but Automatic Body composition Analyser using Computed tomography image Segmentation (ABACS) software automatically segments muscle and adipose tissues to speed analysis. Here, we externally evaluate ABACS in an independent dataset. METHODS: Among patients with non-metastatic colorectal (n = 3102) and breast (n = 2888) cancer diagnosed from 2005 to 2013 at Kaiser Permanente, expert raters annotated tissue areas at the third lumbar vertebra (L3). To compare ABACS segmentation results to manual analysis, we quantified the proportion of pixel-level image overlap using Jaccard scores and agreement between methods using intra-class correlation coefficients for continuous tissue areas. We examined performance overall and among subgroups defined by patient and imaging characteristics. To compare the strength of the mortality associations obtained from ABACS's segmentations to manual analysis, we computed Cox proportional hazards ratios (HRs) and 95% confidence intervals (95% CI) by tertile of tissue area. RESULTS: , respectively. ABACS's performance was lowest for the <2% of patients who were underweight or had anatomic abnormalities. ABACS and manual analysis produced similar associations with mortality; comparing the lowest to highest tertile of skeletal muscle from ABACS versus manual analysis, the HRs were 1.23 (95% CI: 1.00-1.52) versus 1.38 (95% CI: 1.11-1.70) for colorectal cancer patients and 1.30 (95% CI: 1.01-1.66) versus 1.29 (95% CI: 1.00-1.65) for breast cancer patients. CONCLUSIONS: In the first study to externally evaluate a commercially available software to assess body composition, automated segmentation of muscle and adipose tissues using ABACS was similar to manual analysis and associated with mortality after non-metastatic cancer. Automated methods will accelerate body composition research and, eventually, facilitate integration of body composition measures into clinical care.
Recent grants
NIH · $175k · 2011
Frequent coauthors
- 237 shared
Michelle D. Holmes
Brigham and Women's Hospital
- 212 shared
Bette J. Caan
Kaiser Permanente
- 209 shared
Xiao Ou Shu
University of Oxford
- 187 shared
Walter C. Willett
Brigham and Women's Hospital
- 184 shared
John P. Pierce
- 183 shared
A. Heather Eliassen
- 182 shared
Marilyn L. Kwan
Kaiser Permanente
- 171 shared
Shirley W. Flatt
University of California, San Diego
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