LAQV-REQUIMTE, Department of Chemistry and Biochemistry, Faculty of Sciences , 4169-007 , University of Porto , Porto , Portugal.
Institute of Biological Sciences (ICB) , Universidade Federal do Rio Grande -FURG , 96270-900 , Rio Grande , Rio Grande do Sul , Brazil.
J Chem Inf Model. 2019 Jan 28;59(1):86-97. doi: 10.1021/acs.jcim.8b00631. Epub 2018 Nov 27.
Recently, it has been suggested that the mitochondrial oligomycin A-sensitive F0-ATPase subunit is an uncoupling channel linked to apoptotic cell death, and as such, the toxicological inhibition of mitochondrial F0-ATP hydrolase can be an interesting mitotoxicity-based therapy under pathological conditions. In addition, carbon nanotubes (CNTs) have been shown to offer higher selectivity like mitotoxic-targeting nanoparticles. In this work, linear and nonlinear classification algorithms on structure-toxicity relationships with artificial neural network (ANN) models were set up using the fractal dimensions calculated from CNTs as a source of supramolecular chemical information. The potential ability of CNT-family members to induce mitochondrial toxicity-based inhibition of the mitochondrial H-F0F1-ATPase from in vitro assays was predicted. The attained experimental data suggest that CNTs have a strong ability to inhibit the F0-ATPase active-binding site following the order oxidized-CNT (CNT-COOH > CNT-OH) > pristine-CNT and mimicking the oligomycin A mitotoxicity behavior. Meanwhile, the performance of the ANN models was found to be improved by including different nonlinear combinations of the calculated fractal scanning electron microscopy (SEM) nanodescriptors, leading to models with excellent internal accuracy and predictivity on external data to classify correctly CNT-mitotoxic and nonmitotoxic with specificity (Sp > 98.9%) and sensitivity (Sn > 99.0%) from ANN models compared with linear approaches (LNN) with Sp ≈ Sn > 95.5%. Finally, the present study can contribute toward the rational design of carbon nanomaterials and opens new opportunities toward mitochondrial nanotoxicology-based in silico models.
最近,有人提出线粒体寡霉素 A 敏感的 F0-ATP 酶亚基是与细胞凋亡死亡相关的解偶联通道,因此,在病理条件下,抑制线粒体 F0-ATP 水解酶可能是一种有趣的基于线粒体毒性的治疗方法。此外,碳纳米管 (CNT) 已被证明具有更高的选择性,如靶向线粒体的毒性纳米颗粒。在这项工作中,使用从 CNT 计算得到的分形维数作为超分子化学信息的来源,建立了线性和非线性分类算法,用于结构-毒性关系的人工神经网络 (ANN) 模型。预测了 CNT 家族成员在体外试验中对线粒体 H-F0F1-ATP 酶的线粒体毒性抑制的潜在能力。获得的实验数据表明,CNTs 具有很强的能力来抑制 F0-ATP 酶的活性结合位点,其顺序为氧化-CNT(CNT-COOH > CNT-OH)> 原始-CNT,并模拟寡霉素 A 的毒性行为。同时,发现通过包含计算分形扫描电子显微镜 (SEM) 纳米描述符的不同非线性组合,可以提高 ANN 模型的性能,从而得到具有优异内部准确性和外部数据预测性的模型,能够正确地对 CNT 毒性和非毒性进行分类,特异性 (Sp > 98.9%) 和敏感性 (Sn > 99.0%) 优于线性方法 (LNN),其 Sp ≈ Sn > 95.5%。最后,本研究有助于合理设计碳纳米材料,并为基于线粒体纳米毒性的计算模型开辟新的机会。