Atienza Ángel Vizcay, Iriarte Olast Arrizibita, Sarrias Oskitz Ruiz, Lizundia Teresa Zumárraga, Beristain Onintza Sayar, Casajús Ana Ezponda, Gigli Laura Álvarez, Sastre Fernando Rotellar, García Ignacio Matos, Rodríguez Javier Rodríguez
Department of Medical Oncology, Clínica Universidad de Navarra, 31008 Pamplona, Spain.
Department of Mathematics and Statistic, NNBi, 31110 Noain, Spain.
Biomedicines. 2024 Aug 15;12(8):1859. doi: 10.3390/biomedicines12081859.
(1) Background: Liver metastases (LM) are the leading cause of death in colorectal cancer (CRC) patients. Despite advancements, relapse rates remain high and current prognostic nomograms lack accuracy. Our objective is to develop an interpretable neoadjuvant algorithm based on mathematical models to accurately predict individual risk, ensuring mathematical transparency and auditability. (2) Methods: We retrospectively evaluated 86 CRC patients with LM treated with neoadjuvant systemic therapy followed by complete surgical resection. A comprehensive analysis of 155 individual patient variables was performed. Logistic regression (LR) was utilized to develop the predictive model for relapse risk through significance testing and ANOVA analysis. Due to data limitations, gradient boosting machine (GBM) and synthetic data were also used. (3) Results: The model was based on data from 74 patients (12 were excluded). After a median follow-up of 58 months, 5-year relapse-free survival (RFS) rate was 33% and 5-year overall survival (OS) rate was 60.7%. Fifteen key variables were used to train the GBM model, which showed promising accuracy (0.82), sensitivity (0.59), and specificity (0.96) in predicting relapse. Similar results were obtained when external validation was performed as well. (4) Conclusions: This model offers an alternative for predicting individual relapse risk, aiding in personalized adjuvant therapy and follow-up strategies.
(1) 背景:肝转移(LM)是结直肠癌(CRC)患者的主要死亡原因。尽管取得了进展,但复发率仍然很高,且目前的预后列线图缺乏准确性。我们的目标是基于数学模型开发一种可解释的新辅助算法,以准确预测个体风险,确保数学透明度和可审计性。(2) 方法:我们回顾性评估了86例接受新辅助全身治疗后进行完整手术切除的LM CRC患者。对155个个体患者变量进行了全面分析。通过显著性检验和方差分析,利用逻辑回归(LR)建立复发风险预测模型。由于数据限制,还使用了梯度提升机(GBM)和合成数据。(3) 结果:该模型基于74例患者的数据(排除12例)。中位随访58个月后,5年无复发生存率(RFS)为33%,5年总生存率(OS)为60.7%。15个关键变量用于训练GBM模型,该模型在预测复发方面显示出有前景的准确性(0.82)、敏感性(0.59)和特异性(0.96)。进行外部验证时也获得了类似结果。(4) 结论:该模型为预测个体复发风险提供了一种替代方法,有助于个性化辅助治疗和随访策略。