Automated temporalis muscle quantification and growth charts for children through adulthood.
Anna ZapaishchykovaKevin X LiuAnurag SarafZezhong YePaul J CatalanoViviana BenitezYashwanth RavipatiArnav JainJulia HuangHasaan HayatJirapat LikitlersuangSridhar VajapeyamRishi B ChopraAriana M FamiliarAli NabavidazehRaymond H MakAdam C ResnickSabine MuellerTabitha M CooneyDaphne A Haas-KoganTina Y PoussaintHugo J W L AertsBenjamin H KannPublished in: Nature communications (2023)
Lean muscle mass (LMM) is an important aspect of human health. Temporalis muscle thickness is a promising LMM marker but has had limited utility due to its unknown normal growth trajectory and reference ranges and lack of standardized measurement. Here, we develop an automated deep learning pipeline to accurately measure temporalis muscle thickness (iTMT) from routine brain magnetic resonance imaging (MRI). We apply iTMT to 23,876 MRIs of healthy subjects, ages 4 through 35, and generate sex-specific iTMT normal growth charts with percentiles. We find that iTMT was associated with specific physiologic traits, including caloric intake, physical activity, sex hormone levels, and presence of malignancy. We validate iTMT across multiple demographic groups and in children with brain tumors and demonstrate feasibility for individualized longitudinal monitoring. The iTMT pipeline provides unprecedented insights into temporalis muscle growth during human development and enables the use of LMM tracking to inform clinical decision-making.
Keyphrases
- magnetic resonance imaging
- deep learning
- skeletal muscle
- physical activity
- young adults
- risk assessment
- endothelial cells
- computed tomography
- machine learning
- body mass index
- gene expression
- climate change
- depressive symptoms
- white matter
- high throughput
- bone mineral density
- genome wide
- artificial intelligence
- postmenopausal women
- subarachnoid hemorrhage
- weight loss