病变
半影
医学
冲程(发动机)
核医学
缺血性中风
卷积神经网络
放射科
内科学
人工智能
病理
缺血
计算机科学
机械工程
工程类
作者
Adam Marcus,Grant Mair,Liang Chen,Charles Hallett,Claudia Ghezzou Cuervas-Mons,Dylan Roi,Daniel Rueckert,Paul Bentley
标识
DOI:10.1038/s41746-024-01325-z
摘要
Abstract Estimating progression of acute ischemic brain lesions – or biological lesion age - holds huge practical importance for hyperacute stroke management. The current best method for determining lesion age from non-contrast computerised tomography (NCCT), measures Relative Intensity (RI), termed Net Water Uptake (NWU). We optimised lesion age estimation from NCCT using a convolutional neural network – radiomics (CNN-R) model trained upon chronometric lesion age (Onset Time to Scan: OTS), while validating against chronometric and biological lesion age in external datasets ( N = 1945). Coefficients of determination (R 2 ) for OTS prediction, using CNN-R, and RI models were 0.58 and 0.32 respectively; while CNN-R estimated OTS showed stronger associations with ischemic core:penumbra ratio, than RI and chronometric, OTS (ρ 2 = 0.37, 0.19, 0.11); and with early lesion expansion (regression coefficients >2x for CNN-R versus others) (all comparisons: p < 0.05). Concluding, deep-learning analytics of NCCT lesions is approximately twice as accurate as NWU for estimating chronometric and biological lesion ages.
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