Khosla Divya, Singh Gaganpreet, Thakur Vandana, Kapoor Rakesh, Gupta Rajesh, Kumar Divyesh, Madan Renu, Goyal Shikha, Oinam Arun S, Rana Surinder S
Department of Radiotherapy and Oncology, Regional Cancer Centre, Postgraduate Institute of Medical Education and Research (PGIMER), Chandigarh, India.
Department of GI Surgery, HPB, and Liver Transplantation, Postgraduate Institute of Medical Education and Research (PGIMER), Chandigarh, India.
J Cancer Res Ther. 2025 Apr 1;21(3):664-669. doi: 10.4103/jcrt.jcrt_1595_24. Epub 2025 May 24.
Owing to the heterogeneous nature of pancreatic cancer, clinical prediction models are not sufficient for prognostication. Radiomics is quantitative noninvasive assessment performed from imaging which by means of mathematical models can decode tumor phenotype and further predict disease and treatment outcomes. This pilot study aims to investigate the association of CT-based radiomic features with overall survival (OS) in pancreatic cancer patients treated with stereotactic body radiation therapy (SBRT).
This study was conducted in patients of borderline resectable and locally advanced pancreatic cancer at our institute from January 2021 to December 2022. Ten patients underwent neoadjuvant chemotherapy, followed by SBRT with doses ranging from 33 Gy to 42 Gy administered in 5-6 fractions. Subsequent treatment included additional chemotherapy and evaluation for potential surgery. Radiomic features were extracted from planning CT images, and statistical analysis was performed using R software.
Out of 10 patients receiving neoadjuvant chemotherapy followed by SBRT, three underwent surgery. The duration of median follow-up was 15 months, and the median OS was 25 months. A total of 851 radiomic features including 107 original images features and 93 × 8 wavelet-based features were extracted. Using Lasso Cox regression, four wavelet-based features were found to influence the overall survival.
The present study demonstrates that CT-based radiomic features can be a promising tool in predicting survival and in addition to clinical parameters can provide detailed prognostic information that can facilitate personalized patient care. However, clinical implications of this radiomic analysis need a larger number of patients to validate the results.
由于胰腺癌具有异质性,临床预测模型不足以进行预后评估。放射组学是一种从影像学进行的定量无创评估,借助数学模型可以解码肿瘤表型并进一步预测疾病和治疗结果。本前瞻性研究旨在探讨基于CT的放射组学特征与接受立体定向体部放射治疗(SBRT)的胰腺癌患者总生存期(OS)之间的关联。
本研究纳入了2021年1月至2022年12月在我院就诊的边界可切除和局部晚期胰腺癌患者。10例患者接受新辅助化疗,随后接受SBRT,剂量范围为33 Gy至42 Gy,分5 - 6次给予。后续治疗包括额外的化疗和潜在手术评估。从计划CT图像中提取放射组学特征,并使用R软件进行统计分析。
10例接受新辅助化疗后行SBRT的患者中,3例接受了手术。中位随访时间为15个月,中位OS为25个月。共提取了851个放射组学特征,包括107个原始图像特征和93×8个基于小波的特征。使用Lasso Cox回归分析,发现4个基于小波的特征影响总生存期。
本研究表明,基于CT的放射组学特征可能是预测生存的一种有前景的工具,除临床参数外,还可提供详细的预后信息,有助于个性化患者护理。然而,这种放射组学分析的临床意义需要更多患者来验证结果。