Department of Mechanical Engineering, Yonsei University, Seoul 03722, Republic of Korea; Department of Medical Engineering, College of Medicine, Yonsei University, Seoul 03722, Republic of Korea.
Department of Mechanical Engineering, Yonsei University, Seoul 03722, Republic of Korea.
J Hazard Mater. 2024 Jan 15;462:132775. doi: 10.1016/j.jhazmat.2023.132775. Epub 2023 Oct 12.
Plastic waste is a pernicious environmental pollutant that threatens ecosystems and human health by releasing contaminants including di(2-ethylhexyl) phthalate (DEHP) and bisphenol A (BPA). Therefore, a machine-learning (ML)-powered electrochemical aptasensor was developed in this study for simultaneously detecting DEHP and BPA in river waters, particularly to minimize the electrochemical signal errors caused by varying pH levels. The aptasensor leverages a straightforward and effective surface modification strategy featuring gold nanoflowers to achieve low detection limits for DEHP and BPA (0.58 and 0.59 pg/mL, respectively), excellent specificity, and stability. The least-squares boosting (LSBoost) algorithm was introduced to reliably monitor the targets regardless of pH; it employs a layer that adjusts the number of multi-indexes and the parallel learning structure of an ensemble model to accurately predict concentrations by preventing overfitting and enhancing the learning effect. The ML-powered aptasensor successfully detected targets in 12 river sites with diverse pH values, exhibiting higher accuracy and reliability. To our knowledge, the platform proposed in this study is the first attempt to utilize ML for the simultaneous assessment of DEHP and BPA. This breakthrough allows for comprehensive investigations into the effects of contamination originating from diverse plastics by eliminating external interferent-caused influences.
塑料废物是一种有害的环境污染物,它会释放出包括邻苯二甲酸二(2-乙基己基)酯(DEHP)和双酚 A(BPA)在内的污染物,从而威胁到生态系统和人类健康。因此,本研究开发了一种基于机器学习(ML)的电化学适体传感器,用于同时检测河水中的 DEHP 和 BPA,特别是为了最小化因 pH 值变化引起的电化学信号误差。该适体传感器采用了一种简单有效的表面修饰策略,利用金纳米花实现了对 DEHP 和 BPA 的低检测限(分别为 0.58 和 0.59 pg/mL)、优异的特异性和稳定性。最小二乘提升(LSBoost)算法被引入,以可靠地监测目标,无论 pH 值如何;它采用了一层,可以调整多索引的数量和集成模型的并行学习结构,通过防止过拟合和增强学习效果来准确预测浓度。该基于 ML 的适体传感器成功地在 12 个具有不同 pH 值的河流地点检测到了目标,表现出更高的准确性和可靠性。据我们所知,本研究提出的平台是首次尝试利用 ML 同时评估 DEHP 和 BPA。这一突破通过消除外部干扰因素的影响,允许全面研究来自不同塑料的污染的影响。