Cafiero Concetta, Palmirotta Raffaele, Martinelli Canio, Micera Alessandra, Giacò Luciano, Persiani Federica, Morrione Andrea, Pastore Cosimo, Nisi Claudia, Modoni Gabriella, Galeano Teresa, Guarino Tiziana, Foggetti Ilaria, Nisticò Cecilia, Giordano Antonio, Pisconti Salvatore
Medical Oncology, SG Moscati Hospital, 74010 Statte, Italy.
Anatomic Pathology Unit, Fabrizio Spaziani Hospital, 03100 Frosinone, Italy.
Genes (Basel). 2025 Feb 24;16(3):265. doi: 10.3390/genes16030265.
The accurate prediction of adverse drug reactions (ADRs) to oncological treatments still poses a clinical challenge. Chemotherapy is usually selected based on clinical trials that do not consider patient variability in ADR risk. Consequently, many patients undergo multiple treatments to find the appropriate medication or dosage, enhancing ADR risks and increasing the chance of discontinuing therapy. We first aimed to develop a pharmacogenetic model for predicting chemotherapy-induced ADRs in cancer patients (the ANTIBLASTIC DRUG MULTIPANEL PLATFORM) and then to assess its feasibility and validate this model in patients with non-small-cell lung cancer (NSCLC) undergoing oncological treatments. Seventy NSCLC patients of all stages that needed oncological treatment at our facility were enrolled, reflecting the typical population served by our institution, based on geographic and demographic characteristics. Treatments followed existing guidelines, and patients were continuously monitored for adverse reactions. We developed and used a multipanel platform based on 326 SNPs that we identified as strongly associated with response to cancer treatments. Subsequently, a network-based algorithm to link these SNPs to molecular and biological functions, as well as efficacy and adverse reactions to oncological treatments, was used. Data and blood samples were collected from 70 NSCLC patients. A bioinformatic analysis of all identified SNPs highlighted five clusters of patients based on variant aggregations and the associated genes, suggesting potential susceptibility to treatment-related toxicity. We assessed the feasibility of the platform and technically validated it by comparing NSCLC patients undergoing the same course of treatment with or without ADRs against the cluster combination. An odds ratio analysis confirmed the correlation between cluster allocation and increased ADR risk, indicating specific treatment susceptibilities. The ANTIBLASTIC DRUG MULTIPANEL PLATFORM was easily applicable and able to predict ADRs in NSCLC patients undergoing oncological treatments. The application of this novel predictive model could significantly reduce adverse drug reactions and improve the rate of chemotherapy completion, enhancing patient outcomes and quality of life. Its potential for broader prescription management suggests significant treatment improvements in cancer patients.
准确预测肿瘤治疗的药物不良反应(ADR)仍是一项临床挑战。化疗通常是根据临床试验来选择的,而这些试验并未考虑患者在ADR风险方面的个体差异。因此,许多患者要接受多种治疗才能找到合适的药物或剂量,这增加了ADR风险,也增加了中断治疗的可能性。我们的首要目标是开发一种药物遗传学模型,用于预测癌症患者化疗引起的ADR(抗化疗药物多组学平台),然后评估其可行性,并在接受肿瘤治疗的非小细胞肺癌(NSCLC)患者中验证该模型。我们纳入了在我们机构需要接受肿瘤治疗的70例各期NSCLC患者,这些患者基于地理和人口统计学特征反映了我们机构所服务的典型人群。治疗遵循现有指南,并对患者的不良反应进行持续监测。我们开发并使用了一个基于326个单核苷酸多态性(SNP)的多组学平台,这些SNP被我们确定与癌症治疗反应密切相关。随后,使用了一种基于网络的算法,将这些SNP与分子和生物学功能以及肿瘤治疗的疗效和不良反应联系起来。从70例NSCLC患者中收集了数据和血液样本。对所有已鉴定的SNP进行的生物信息学分析,根据变异聚集情况和相关基因,突出显示了五组患者,提示其对治疗相关毒性的潜在易感性。我们通过比较接受相同疗程治疗且有或无ADR的NSCLC患者与聚类组合,评估了该平台的可行性并对其进行了技术验证。优势比分析证实了聚类分配与ADR风险增加之间的相关性,表明了特定的治疗易感性。抗化疗药物多组学平台易于应用,能够预测接受肿瘤治疗的NSCLC患者的ADR。这种新型预测模型的应用可以显著减少药物不良反应,提高化疗完成率,改善患者的治疗效果和生活质量。其在更广泛处方管理方面的潜力表明,癌症患者的治疗将有显著改善。