A chest CT-based nomogram for predicting survival in acute myeloid leukemia

Author:

Yi Xiaoping,Zhan Huien,Lyu Jun,Du Juan,Dai Min,Zhao Min,Zhang Yu,Zhou Cheng,Xu Xin,Fan Yi,Li Lin,Dong Baoxia,Jiang Xinya,Xiao Zeyu,Zhou Jihao,Zhao Minyi,Zhang Jian,Fu Yan,Chen Tingting,Xu Yang,Tian Jie,Liu Qifa,Zeng Hui

Abstract

Abstract Background The identification of survival predictors is crucial for early intervention to improve outcome in acute myeloid leukemia (AML). This study aim to identify chest computed tomography (CT)-derived features to predict prognosis for acute myeloid leukemia (AML). Methods 952 patients with pathologically-confirmed AML were retrospectively enrolled between 2010 and 2020. CT-derived features (including body composition and subcutaneous fat features), were obtained from the initial chest CT images and were used to build models to predict the prognosis. A CT-derived MSF nomogram was constructed using multivariate Cox regression incorporating CT-based features. The performance of the prediction models was assessed with discrimination, calibration, decision curves and improvements. Results Three CT-derived features, including myosarcopenia, spleen_CTV, and SF_CTV (MSF) were identified as the independent predictors for prognosis in AML (P < 0.01). A CT-MSF nomogram showed a performance with AUCs of 0.717, 0.794, 0.796 and 0.792 for predicting the 1-, 2-, 3-, and 5-year overall survival (OS) probabilities in the validation cohort, which were significantly higher than the ELN risk model. Moreover, a new MSN stratification system (MSF nomogram plus ELN risk model) could stratify patients into new high, intermediate and low risk group. Patients with high MSN risk may benefit from intensive treatment (P = 0.0011). Conclusions In summary, the chest CT-MSF nomogram, integrating myosarcopenia, spleen_CTV, and SF_CTV features, could be used to predict prognosis of AML.

Funder

Natural Science Foundation of Hunan Province

China Postdoctoral Science Foundation

National Natural Science Foundation of China

Natural Science Foundation of Guangdong Province

Publisher

Springer Science and Business Media LLC

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