Computed tomography radiomic analysis of paraspinal muscles in the prognosis of advanced head and neck cancers

IF 2.6 Q3 NUTRITION & DIETETICS
Rémi Thomas-Monier , Alexane Lere , Bruno Pereira , Julian Biau , Maureen Bernadach , Lucie Cassagnes , Nicolas Saroul , Benoît Magnin
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引用次数: 0

Abstract

Background & aims

Sarcopenia is a well-recognized risk factor for adverse outcomes in neoplastic diseases, and body composition assessment using computed tomography is a standard method for its evaluation. Radiomics, an automated and quantitative image-analysis approach that has demonstrated prognostic value in various clinical contexts, has not yet been applied to the assessment of axial musculature for outcome prediction in head and neck cancers. The primary aim of this study was to investigate whether radiomic analysis of the paravertebral muscles on computed tomography imaging could improve survival prediction in patients with locally advanced head and neck cancer.

Methods

We retrospectively included 71 patients with locally advanced head and neck cancer who received induction chemotherapy at our institution. Radiomic features were extracted following manual segmentation of the paravertebral muscles at the L1 level on computed tomography scan. Only features that were unaffected by the timing of contrast injection and demonstrated high intra-observer reproducibility were retained for analysis. Associations between these radiomic features and survival were assessed using univariate and multivariate Cox proportional hazards regression. Relationships with treatment toxicity and therapeutic response were evaluated using either Student's t-test or the Mann–Whitney test, as appropriate, and multivariate logistic regression.

Results

A total of 21 radiomic parameters were retained for analysis. In the multivariate analysis, none of these parameters were significantly associated with survival. However, the ability to maintain oral feeding at diagnosis and one histogram-based radiomic feature - the sum of Hounsfield unit values after discretization - emerged as the most promising predictors. After binarization of this histogram feature, both variables were significantly associated with survival, stratifying the cohort into four groups with distinct survival outcomes (p < 0.001). None of the radiomic parameters demonstrated a significant association with treatment-related toxicity in the multivariate analysis. Nevertheless, the CT subcutaneous fat index and the second-order radiomic feature GLRLM SRE exhibited a trend toward being risk factors for toxicity.

Conclusions

No parameter, including radiomic features, was able to statistically and independently demonstrate prognostic value for locally advanced head and neck cancers. However, a radiomic feature, the sum of Hounsfield unit value after discretization, when used in conjunction with Computed Tomography body composition parameters and clinico biological nutritional parameters could help predict survival.
脊柱旁肌肉的计算机断层放射学分析与晚期头颈部癌症预后的关系。
背景与目的:骨骼肌减少症是肿瘤疾病不良结局的一个公认的危险因素,使用计算机断层扫描评估身体成分是评估其标准方法。放射组学是一种自动化和定量的图像分析方法,已在各种临床环境中证明了预后价值,但尚未应用于头颈部癌症预后预测的轴向肌肉组织评估。本研究的主要目的是探讨椎旁肌肉的计算机断层成像放射组学分析是否可以提高局部晚期头颈癌患者的生存预测。方法:回顾性纳入71例在我院接受诱导化疗的局部晚期头颈癌患者。在计算机断层扫描L1水平对椎旁肌肉进行人工分割后提取放射学特征。只有不受造影剂注射时间影响的特征,以及表现出较高的观察者内再现性,才被保留用于分析。使用单因素和多因素Cox比例风险回归评估这些放射学特征与生存率之间的关系。使用学生t检验或Mann-Whitney检验(视情况而定)和多变量逻辑回归评估与治疗毒性和治疗反应的关系。结果:共保留21个放射学参数进行分析。在多变量分析中,这些参数均与生存率无显著相关性。然而,在诊断时维持口服喂养的能力和一个基于直方图的放射学特征-离散化后的霍斯菲尔德单位值的总和-成为最有希望的预测因素。该直方图特征二值化后,这两个变量都与生存率显著相关,将队列分层为四组,生存结果不同(结论:没有参数,包括放射学特征,能够统计和独立地证明局部晚期头颈癌的预后价值。然而,放射学特征,离散化后的霍斯菲尔德单位值的总和,当与计算机断层扫描身体成分参数和临床生物营养参数结合使用时,可以帮助预测生存率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Clinical nutrition ESPEN
Clinical nutrition ESPEN NUTRITION & DIETETICS-
CiteScore
4.90
自引率
3.30%
发文量
512
期刊介绍: Clinical Nutrition ESPEN is an electronic-only journal and is an official publication of the European Society for Clinical Nutrition and Metabolism (ESPEN). Nutrition and nutritional care have gained wide clinical and scientific interest during the past decades. The increasing knowledge of metabolic disturbances and nutritional assessment in chronic and acute diseases has stimulated rapid advances in design, development and clinical application of nutritional support. The aims of ESPEN are to encourage the rapid diffusion of knowledge and its application in the field of clinical nutrition and metabolism. Published bimonthly, Clinical Nutrition ESPEN focuses on publishing articles on the relationship between nutrition and disease in the setting of basic science and clinical practice. Clinical Nutrition ESPEN is available to all members of ESPEN and to all subscribers of Clinical Nutrition.
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