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通过金纳米颗粒上泪液衍生的蛋白质冠层对脉络膜黑色素瘤进行无创检测:一种机器学习方法。

Non-invasive detection of choroidal melanoma via tear-derived protein corona on gold nanoparticles: a machine learning approach.

作者信息

Rakhshandeh Hakimeh, Nasiraei Ahmad, Riazi-Esfahani Hamid, Masoomian Babak, Ghassemi Fariba, Arjmand Mojtaba, Keshel Saeed Heidari, Atyabi Fatemeh, Dinarvand Rassoul

机构信息

Department of Pharmaceutical Nanotechnology, Faculty of Pharmacy, Tehran University of Medical Sciences, Tehran, Iran.

Nanotechnology Research Center, Faculty of Pharmacy, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

Sci Rep. 2025 Sep 25;15(1):32829. doi: 10.1038/s41598-025-17835-z.

Abstract

This study investigates the feasibility of using tear sample analysis, based on protein corona formation on gold nanoparticles combined with electrospray ionization mass spectrometry (ESI-MS) and machine learning techniques, as a non-invasive approach for the detection of choroidal melanoma. The aim is to assess whether protein-nanoparticle interactions can support early and reliable identification of this ocular condition. Tear samples were collected using Schirmer strips from six healthy individuals and six patients diagnosed with choroidal melanoma, with subsequent augmentation to 18 samples per group. Gold nanoparticles (AuNPs, ~ 20 nm) were synthesized via citrate reduction and incubated with tear samples to form protein coronas, which were analyzed using ESI-MS. Eight statistical and entropy-based features (mean, variance, skewness, kurtosis, Shannon entropy, approximate entropy, sample entropy, and permutation entropy) were extracted from spectral data. Additionally, Continuous Wavelet Transform (CWT) with Mexican hat wavelet was applied to convert mass spectrometry data into 128 × 128 RGB images for deep learning analysis. Classification was performed using traditional machine learning models (Random Forest, Support Vector Machine, Decision Tree, Deep Neural Network) and transfer learning with pre-trained CNNs (VGG16, ResNet50, Xception), evaluated through 5-fold cross-validation. Significant differences in spectral intensity parameters were observed between healthy individuals and choroidal melanoma patients (p < 0.001), with notably lower Mean_Intensity values in cancer patients (56.41 ± 46.06 vs. 111.02 ± 10.01, Cohen's d = 1.64). While m/z parameters showed moderate differences that didn't reach statistical significance (p = 0.082), entropy-based features demonstrated strong discriminative power. Among traditional machine learning models, Random Forest achieved the highest accuracy (0.959 ± 0.003) and ROC AUC (0.993 ± 0.000) with remarkable computational efficiency (3.90 s per fold). For deep learning approaches using CWT-generated images, VGG16 demonstrated superior performance (Accuracy: 0.976 ± 0.008, ROC AUC: 0.997 ± 0.002) despite requiring significantly higher computational resources (1349.52 s per fold). This study demonstrates that tear sample analysis using protein corona formation on gold nanoparticles with ESI-MS and advanced machine learning techniques offers a promising non-invasive approach for choroidal melanoma detection with performance metrics that compare favorably to existing methods. The significant differences in spectral intensity parameters between groups suggest distinctive proteomic signatures that can be leveraged for diagnostic purposes. While both traditional machine learning and deep learning approaches achieved exceptional performance, each offers distinct advantages in terms of computational efficiency and feature extraction capabilities.

摘要

本研究探讨了基于金纳米颗粒上蛋白质冠层形成,结合电喷雾电离质谱(ESI-MS)和机器学习技术的泪液样本分析,作为检测脉络膜黑色素瘤的非侵入性方法的可行性。目的是评估蛋白质 - 纳米颗粒相互作用是否能够支持对这种眼部疾病的早期和可靠识别。使用施密特试纸从六名健康个体和六名被诊断为脉络膜黑色素瘤的患者中收集泪液样本,随后每组增加至18个样本。通过柠檬酸盐还原法合成金纳米颗粒(AuNPs,约20纳米),并与泪液样本孵育以形成蛋白质冠层,然后使用ESI-MS进行分析。从光谱数据中提取了八个基于统计和熵的特征(均值、方差、偏度、峰度、香农熵、近似熵、样本熵和排列熵)。此外,应用具有墨西哥帽小波的连续小波变换(CWT)将质谱数据转换为128×128的RGB图像,用于深度学习分析。使用传统机器学习模型(随机森林、支持向量机、决策树、深度神经网络)和预训练的卷积神经网络(VGG16、ResNet50、Xception)进行迁移学习进行分类,通过五折交叉验证进行评估。在健康个体和脉络膜黑色素瘤患者之间观察到光谱强度参数存在显著差异(p < 0.001),癌症患者的平均强度值明显较低(56.41±46.06 vs. 111.02±10.01,科恩d = 1.64)。虽然m/z参数显示出中等差异,但未达到统计学显著性(p = 0.082),基于熵的特征显示出强大的判别能力。在传统机器学习模型中,随机森林实现了最高的准确率(0.959±0.003)和ROC AUC(0.993±0.000),并且具有显著的计算效率(每折3.90秒)。对于使用CWT生成图像的深度学习方法,VGG16表现出卓越的性能(准确率:0.976±0.008,ROC AUC:0.997±0.002),尽管需要显著更高的计算资源(每折1349.52秒)。本研究表明,使用金纳米颗粒上蛋白质冠层形成结合ESI-MS和先进机器学习技术的泪液样本分析,为脉络膜黑色素瘤检测提供了一种有前景的非侵入性方法,其性能指标与现有方法相比具有优势。组间光谱强度参数的显著差异表明可以利用独特的蛋白质组学特征进行诊断。虽然传统机器学习和深度学习方法都取得了优异的性能,但在计算效率和特征提取能力方面各自具有独特的优势。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a312/12464298/9bde8d8a3dac/41598_2025_17835_Fig1_HTML.jpg

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