Abstract

Study designRetrospective analysis of a registered cohort of patients treated and irradiated for metastases in the spinal column in a single institute. ObjectiveThis is the first study to develop and internally validate radiomics features for predicting six-month survival probability for patients with spinal bone metastases (SBM). Background dataExtracted radiomics features from routine clinical CT images can be used to identify textural and intensity-based features unperceivable to human observers and associate them with a patient survival probability or disease progression. MethodsA study was conducted on 250 patients treated for metastases in the spinal column irradiated for the first time between 2014 and 2016, at the MAASTRO clinic in Maastricht, the Netherlands. The first 150 available patients were used to develop the model and the subsequent 100 patient were considered as a test set for the model. A bootstrap (B = 400) stepwise model selection, which combines both the forward and backward variable elimination procedure, was used to select the most useful predictive features from the training data based on the Akaike information criterion (AIC). The stepwise selection procedure was applied to the 400 bootstrap samples, and the results were plotted as a histogram to visualize how often each variable was selected. Only variables selected more than 90 % of the time over the bootstrap runs were used to build the final model.A prognostic index (PI) called radiomics score (radscore) and clinical score (clinscore) was calculated for each patient. The prognostic index was not scaled, the original values were used which can be extracted from the model directly or calculated as a linear combination of the variables in the model multiplied by the respective beta value for each patient. ResultsThe clinical model had a good discrimination power. The radiomics model, on the other hand, had an inferior performance with no added predictive power to the clinical model. The internal imaging characteristics do not seem to have a value in the prediction of survival. However, the Shape features were excluded from further analyses in our study since all biopsies had a standard shape hence no variability.

Highlights

  • Spinal bone metastases (SBMs) are often accompanied by a signifi­ cant burden of morbidity, causing cancer-induced bone pain, pathologic fractures, or neurological complications as a consequence of nerve root and spinal cord compression, leading to a reduced quality of life and impaired survival [1]

  • A retrospective study was conducted on 250 patients treated for metastases in the spinal column irradiated for the first time between January 1, 2014, and December 31, 2016, at the MAASTRO clinic in Maastricht, the Netherlands

  • There was no statistically significant difference between pa­ tients who were alive and those who died for almost all the variables for both the train and test data, except for the variables clinical profile and visceral metastases

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Summary

Introduction

Spinal bone metastases (SBMs) are often accompanied by a signifi­ cant burden of morbidity, causing cancer-induced bone pain, pathologic fractures, or neurological complications as a consequence of nerve root and spinal cord compression, leading to a reduced quality of life and impaired survival [1]. Several studies have been published to assess the prognostic value of single variables, and multiple variables combined into predictive models. Existing predictive models lack discriminative ability, predicting which patients will survive for more than 3 to 6 months and become potential candidates for surgical treatment [5,6,7,8,9,10,11,12,13,14,15]. Tissue markers derived from tumor biopsies usually represent only a small tumor subregion at a single time point. They are often not representative of the tumors’ biology or the biological alterations during and after treatment. Radiomics, which extracts and analyses vast amounts of advanced quantitative imaging features with high throughput from medical images like Computed Tomography (CT), is gaining interest in health care and becoming increasingly important [16]

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