多目标优化与支持向量回归相结合的非阿片类疼痛精准治疗方法

J. Gudin, S. Mavroudi, A. Korfiati, K. Theofilatos, D. Dietze, Peter L Hurwitz
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引用次数: 1

摘要

慢性疼痛与对心理和社会因素的负面影响、死亡率和几种疾病有关。最近,重点集中在非阿片类药物治疗上,以克服其成瘾性和其他副作用。为了解决这个问题,OPERA研究评估了局部镇痛药作为阿片类药物治疗疼痛的替代方法的有效性。初步结果表明,局部镇痛药对大多数慢性疼痛患者有显著的益处。然而,有一部分患者似乎没有从规定的治疗中受益,一些参与者的情况在干预后恶化。在目前的研究中,我们正在探索机器学习方法的潜力,将慢性疼痛患者分为那些将受益于局部镇痛治疗的患者和那些不会受益于局部镇痛治疗的患者,以便个性化治疗。为此,我们采用多目标优化与支持向量回归相结合的混合方法来处理不平衡数据集,选择最优的特征子集,优化回归模型的参数,使预测精度最大化。所提出的方法显著地克服了其他最先进的方法。实验结果表明,该方法能够以合理的准确度(AUC 73.8-87.2%)预测本研究的结果,为精准医学治疗慢性疼痛提供了可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A precision medicine approach for non-opioid pain therapy using a combination of multi-objective optimization and support vector regression
Chronic pain has been linked with negative impacts on psychological and social factors, with mortality and several diseases. Lately, emphasis has been focused on non-opioid treatments to overcome its addictive nature and other side effects. To address this, the OPERA study evaluated the effectiveness of topical analgesics as an alternative method to opioids for pain therapy. Initial results showed that topical analgesics have significant benefits for the majority of chronic pain patients. However, there were segments of patients who did not seem to benefit from prescribed therapy and some participants whose situation deteriorated after the intervention. In the present study, we are exploring the potential of machine learning methods to classify chronic pain patients into those who will benefit from topical analgesics treatment and those who will not, in order to personalize their treatment. For this purpose, we utilized a hybrid combination of multi-objective optimization and support vector regression which is able to handle imbalanced datasets, select the optimal features subset and optimize the parameters of the regression model so as to maximize the predictive accuracy. The proposed method significantly overcame other state-of-the-art methods. Experimental results showed that its application can predict, with reasonable accuracy (AUC 73.8-87.2%), the outcomes of this study allowing for a precision medicine approach in treating chronic pain.
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