Alkhatabi Heba Ahmed, Alatyb Hisham N
Faculty of Applied Medical Science, King Abdulaziz University, Jeddah 22254, Saudi Arabia.
Hematology Research Unit (HRU), King Fahd Medical Research Center (KFMRC), Jeddah 22252, Saudi Arabia.
Cancers (Basel). 2024 Nov 27;16(23):3979. doi: 10.3390/cancers16233979.
BACKGROUND/OBJECTIVES: Human epidermal growth factor receptor 2 (HER2) is overexpressed in several malignancies, such as breast, gastric, ovarian, and lung cancers, where it promotes aggressive tumor proliferation and unfavorable prognosis. Targeting HER2 has thus emerged as a crucial therapeutic strategy, particularly for HER2-positive malignancies. The present study focusses on the design and optimization of peptide inhibitors targeting HER2, utilizing machine learning to identify and enhance peptide candidates with elevated binding affinities. The aim is to provide novel therapeutic options for malignancies linked to HER2 overexpression.
This study started with the extraction and structural examination of the HER2 protein, succeeded by designing the peptide sequences derived from essential interaction residues. A machine learning technique (XGBRegressor model) was employed to predict binding affinities, identifying the top 20 peptide possibilities. The candidates underwent further screening via the FreeSASA methodology and binding free energy calculations, resulting in the selection of four primary candidates (pep-17, pep-7, pep-2, and pep-15). Density functional theory (DFT) calculations were utilized to evaluate molecular and reactivity characteristics, while molecular dynamics simulations were performed to investigate inhibitory mechanisms and selectivity effects. Advanced computational methods, such as QM/MM simulations, offered more understanding of peptide-protein interactions.
Among the four principal peptides, pep-7 exhibited the most elevated DFT values (-3386.93 kcal/mol) and the maximum dipole moment (10,761.58 Debye), whereas pep-17 had the lowest DFT value (-5788.49 kcal/mol) and the minimal dipole moment (2654.25 Debye). Molecular dynamics simulations indicated that pep-7 had a steady binding free energy of -12.88 kcal/mol and consistently bound inside the HER2 pocket during a 300 ns simulation. The QM/MM simulations showed that the overall total energy of the system, which combines both QM and MM contributions, remained around -79,000 ± 400 kcal/mol, suggesting that the entire protein-peptide complex was in a stable state, with pep-7 maintaining a strong, well-integrated binding.
Pep-7 emerged as the most promising therapeutic peptide, displaying strong binding stability, favorable binding free energy, and molecular stability in HER2-overexpressing cancer models. These findings suggest pep-7 as a viable therapeutic candidate for HER2-positive cancers, offering a potential novel treatment strategy against HER2-driven malignancies.
背景/目的:人表皮生长因子受体2(HER2)在多种恶性肿瘤中过度表达,如乳腺癌、胃癌、卵巢癌和肺癌,它会促进肿瘤的侵袭性增殖并导致不良预后。因此,靶向HER2已成为一种关键的治疗策略,尤其是对于HER2阳性的恶性肿瘤。本研究聚焦于靶向HER2的肽抑制剂的设计与优化,利用机器学习来识别和增强具有更高结合亲和力的肽候选物。目的是为与HER2过表达相关的恶性肿瘤提供新的治疗选择。
本研究首先提取并检查HER2蛋白的结构,然后设计源自关键相互作用残基的肽序列。采用机器学习技术(XGBRegressor模型)预测结合亲和力,确定前20种肽可能性。通过FreeSASA方法和结合自由能计算对候选物进行进一步筛选,最终选择了四种主要候选物(pep-17、pep-7、pep-2和pep-15)。利用密度泛函理论(DFT)计算评估分子和反应特性,同时进行分子动力学模拟以研究抑制机制和选择性效应。先进的计算方法,如QM/MM模拟,有助于更深入了解肽-蛋白质相互作用。
在这四种主要肽中,pep-7的DFT值最高(-3386.93 kcal/mol),偶极矩最大(10761.58德拜),而pep-17的DFT值最低(-5788.49 kcal/mol),偶极矩最小(2654.25德拜)。分子动力学模拟表明,pep-7的结合自由能稳定在-12.88 kcal/mol,在300 ns的模拟过程中始终结合在HER2口袋内。QM/MM模拟表明,结合了QM和MM贡献的系统总能量保持在-79000±400 kcal/mol左右,这表明整个蛋白质-肽复合物处于稳定状态,pep-7保持着强而稳定的结合。
Pep-7是最有前景的治疗性肽,在HER2过表达的癌症模型中表现出强结合稳定性、良好的结合自由能和分子稳定性。这些发现表明pep-7是HER2阳性癌症的可行治疗候选物,为对抗HER2驱动的恶性肿瘤提供了一种潜在的新治疗策略。