Volovăț Simona Ruxandra, Popa Tudor Ovidiu, Rusu Dragoș, Ochiuz Lăcrămioara, Vasincu Decebal, Agop Maricel, Buzea Călin Gheorghe, Volovăț Cristian Constantin
University of Medicine and Pharmacy "Grigore T. Popa" Iași, 700115 Iași, Romania.
Faculty of Engineering, "Vasile Alecsandri" University of Bacău, 600115 Bacău, Romania.
Diagnostics (Basel). 2024 Sep 21;14(18):2091. doi: 10.3390/diagnostics14182091.
Accurate prediction of tumor dynamics following Gamma Knife radiosurgery (GKRS) is critical for optimizing treatment strategies for patients with brain metastases (BMs). Traditional machine learning (ML) algorithms have been widely used for this purpose; however, recent advancements in deep learning, such as autoencoders, offer the potential to enhance predictive accuracy. This study aims to evaluate the efficacy of autoencoders compared to traditional ML models in predicting tumor progression or regression after GKRS. The primary objective of this study is to assess whether integrating autoencoder-derived features into traditional ML models can improve their performance in predicting tumor dynamics three months post-GKRS in patients with brain metastases. This retrospective analysis utilized clinical data from 77 patients treated at the "Prof. Dr. Nicolae Oblu" Emergency Clinic Hospital-Iasi. Twelve variables, including socio-demographic, clinical, treatment, and radiosurgery-related factors, were considered. Tumor progression or regression within three months post-GKRS was the primary outcome, with 71 cases of regression and 6 cases of progression. Traditional ML models, such as Logistic Regression, Support Vector Machine (SVM), K-Nearest Neighbors (KNN), Extra Trees, Random Forest, and XGBoost, were trained and evaluated. The study further explored the impact of incorporating features derived from autoencoders, particularly focusing on the effect of compression in the bottleneck layer on model performance. Traditional ML models achieved accuracy rates ranging from 0.91 (KNN) to 1.00 (Extra Trees). Integrating autoencoder-derived features generally enhanced model performance. Logistic Regression saw an accuracy increase from 0.91 to 0.94, and SVM improved from 0.85 to 0.96. XGBoost maintained consistent performance with an accuracy of 0.94 and an AUC of 0.98, regardless of the feature set used. These results demonstrate that hybrid models combining deep learning and traditional ML techniques can improve predictive accuracy. The study highlights the potential of hybrid models incorporating autoencoder-derived features to enhance the predictive accuracy and robustness of traditional ML models in forecasting tumor dynamics post-GKRS. These advancements could significantly contribute to personalized medicine, enabling more precise and individualized treatment planning based on refined predictive insights, ultimately improving patient outcomes.
准确预测伽玛刀放射外科治疗(GKRS)后的肿瘤动态对于优化脑转移瘤(BM)患者的治疗策略至关重要。传统机器学习(ML)算法已广泛用于此目的;然而,深度学习的最新进展,如自动编码器,提供了提高预测准确性的潜力。本研究旨在评估自动编码器与传统ML模型相比在预测GKRS后肿瘤进展或消退方面的疗效。本研究的主要目的是评估将自动编码器衍生的特征整合到传统ML模型中是否可以提高其在预测脑转移瘤患者GKRS后三个月肿瘤动态方面的性能。这项回顾性分析利用了在“尼古拉·奥布卢教授”雅西急诊临床医院接受治疗的77例患者的临床数据。考虑了12个变量,包括社会人口统计学、临床、治疗和放射外科相关因素。GKRS后三个月内的肿瘤进展或消退是主要结果,其中71例消退,6例进展。对传统ML模型,如逻辑回归、支持向量机(SVM)、K近邻(KNN)、极端随机树、随机森林和XGBoost进行了训练和评估。该研究进一步探讨了纳入自动编码器衍生特征的影响,特别关注瓶颈层压缩对模型性能的影响。传统ML模型的准确率在0.91(KNN)至1.00(极端随机树)之间。整合自动编码器衍生的特征通常会提高模型性能。逻辑回归的准确率从0.91提高到0.94,SVM从0.85提高到0.96。无论使用何种特征集,XGBoost都保持一致的性能,准确率为0.94,曲线下面积(AUC)为0.98。这些结果表明,结合深度学习和传统ML技术的混合模型可以提高预测准确性。该研究强调了纳入自动编码器衍生特征的混合模型在提高传统ML模型预测GKRS后肿瘤动态的准确性和稳健性方面的潜力。这些进展可能对个性化医疗做出重大贡献,基于精确的预测见解实现更精确和个性化的治疗计划,最终改善患者预后。