Tabari Azadeh, Cox Meredith, D'Amore Brian, Mansur Arian, Dabbara Harika, Boland Genevieve, Gee Michael S, Daye Dania
Department of Radiology, Massachusetts General Hospital, 55 Fruit Street, Boston, MA 02114, USA.
Harvard Medical School, Boston, MA 02215, USA.
Cancers (Basel). 2023 May 10;15(10):2700. doi: 10.3390/cancers15102700.
Pretreatment LDH is a standard prognostic biomarker for advanced melanoma and is associated with response to ICI. We assessed the role of machine learning-based radiomics in predicting responses to ICI and in complementing LDH for prognostication of metastatic melanoma. From 2008-2022, 79 patients with 168 metastatic hepatic lesions were identified. All patients had arterial phase CT images 1-month prior to initiation of ICI. Response to ICI was assessed on follow-up CT at 3 months using RECIST criteria. A machine learning algorithm was developed using radiomics. Maximum relevance minimum redundancy (mRMR) was used to select features. ROC analysis and logistic regression analyses evaluated performance. Shapley additive explanations were used to identify the variables that are the most important in predicting a response. mRMR selection revealed 15 features that are associated with a response to ICI. The machine learning model combining both radiomics features and pretreatment LDH resulted in better performance for response prediction compared to models that included radiomics or LDH alone (AUC of 0.89 (95% CI: [0.76-0.99]) vs. 0.81 (95% CI: [0.65-0.94]) and 0.81 (95% CI: [0.72-0.91]), respectively). Using SHAP analysis, LDH and two GLSZM were the most predictive of the outcome. Pre-treatment CT radiomic features performed equally well to serum LDH in predicting treatment response.
治疗前乳酸脱氢酶(LDH)是晚期黑色素瘤的标准预后生物标志物,且与免疫检查点抑制剂(ICI)的反应相关。我们评估了基于机器学习的放射组学在预测ICI反应以及补充LDH用于转移性黑色素瘤预后评估方面的作用。2008年至2022年期间,共纳入79例患者的168个转移性肝脏病变。所有患者在开始ICI治疗前1个月均有动脉期CT图像。使用实体瘤疗效评价标准(RECIST)在3个月后的随访CT上评估对ICI的反应。利用放射组学开发了一种机器学习算法。采用最大相关最小冗余法(mRMR)选择特征。通过ROC分析和逻辑回归分析评估性能。使用Shapley加性解释来识别预测反应中最重要的变量。mRMR选择揭示了15个与ICI反应相关的特征。与单独包含放射组学特征或LDH的模型相比,结合放射组学特征和治疗前LDH的机器学习模型在反应预测方面表现更好(AUC分别为0.89(95%CI:[0.76 - 0.99])、0.81(95%CI:[0.65 - 0.94])和0.81(95%CI:[0.72 - 0.91]))。使用SHAP分析,LDH和两个灰度共生矩阵(GLSZM)对结果的预测性最强。治疗前CT放射组学特征在预测治疗反应方面与血清LDH表现相当。