拉曼光谱辅助机器学习方法检测血清中的原发性骨髓纤维化;与临床诊断的相关性。

IF 4.2 2区 医学 Q2 MEDICINE, RESEARCH & EXPERIMENTAL
Zozan Guleken PhD , Zeynep Ceylan PhD , Aynur Aday PhD , Ayşe Gül Bayrak PhD , İpek Yönal Hindilerden MD, Prof. , Meliha Nalçacı MD, Prof. , Paweł Jakubczyk Prof. , Dorota Jakubczyk PhD , Monika Kula-Maximenko PhD , Joanna Depciuch PhD
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引用次数: 0

摘要

原发性骨髓纤维化(PM)是骨髓增生性肿瘤之一,其中干细胞来源的克隆性肿瘤备受关注。这种疾病的诊断基于:身体检查、外周血检查、骨髓形态学、细胞遗传学和分子标记。然而,在其他骨髓增生性肿瘤如真性红细胞增多症和原发性血小板增多症中也观察到PM的分子标记物,它是JAK2V617F基因的突变。因此,需要找到提供PM特有的标志物的方法,并允许PM诊断的更高准确性,从而允许疾病的治疗。继续,在这项研究中,我们使用拉曼光谱、主成分分析(PCA)和偏最小二乘(PLS)分析作为PM的有用诊断工具。因此,我们使用了从PM患者收集的血清,这些血清使用PM的临床参数进行分类,如原发性骨髓纤维化的动态国际预后评分系统(DIPSS)加评分,JAK2V617F突变、脾脏大小、骨髓网织蛋白纤维化程度及羟基脲类药物的使用特点。拉曼光谱显示,与健康患者相比,PM患者的C-H、C-C和C-C/C-N以及酰胺II的量更高,酰胺I的量和CH3基团的振动量更低。此外,PM患者的酰胺II和I振动发生了变化。使用机器学习方法分析拉曼区域:(i)800 cm-1和1800 cm-1,(ii)1600 cm-1至1700 cm-1,和(iii)2700 cm-1至3000 cm-1显示出100%的准确性、敏感性和特异性。光谱动力学的差异表明,酰胺II和酰胺I区域的差异在区分PM和健康受试者方面最为显著。重要的是,到目前为止,还没有利用拉曼光谱和PM临床预后评分之间的相关性来确定拉曼光谱在PM疾病的临床诊断中的疗效。继续,我们的结果显示了拉曼信号与骨髓纤维化以及JAKV617F之间的相关性。因此,结果表明,拉曼光谱在医学实验室诊断中具有很高的潜力,可以同时量化多种生物标志物,特别是在选定的拉曼区域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detection of primary myelofibrosis in blood serum via Raman spectroscopy assisted by machine learning approaches; correlation with clinical diagnosis

Detection of primary myelofibrosis in blood serum via Raman spectroscopy assisted by machine learning approaches; correlation with clinical diagnosis

Primary myelofibrosis (PM) is one of the myeloproliferative neoplasm, where stem cell-derived clonal neoplasms was noticed. Diagnosis of this disease is based on: physical examination, peripheral blood findings, bone marrow morphology, cytogenetics, and molecular markers. However, the molecular marker of PM, which is a mutation in the JAK2V617F gene, was observed also in other myeloproliferative neoplasms such as polycythemia vera and essential thrombocythemia. Therefore, there is a need to find methods that provide a marker unique to PM and allow for higher accuracy of PM diagnosis and consequently the treatment of the disease. Continuing, in this study, we used Raman spectroscopy, Principal Components Analysis (PCA), and Partial Least Squares (PLS) analysis as helpful diagnostic tools for PM. Consequently, we used serum collected from PM patients, which were classified using clinical parameters of PM such as the dynamic international prognostic scoring system (DIPSS) for primary myelofibrosis plus score, the JAK2V617F mutation, spleen size, bone marrow reticulin fibrosis degree and use of hydroxyurea drug features. Raman spectra showed higher amounts of C-H, C-C and C-C/C-N and amide II and lower amounts of amide I and vibrations of CH3 groups in PM patients than in healthy ones. Furthermore, shifts of amides II and I vibrations in PM patients were noticed. Machine learning methods were used to analyze Raman regions: (i) 800 cm−1 and 1800 cm−1, (ii) 1600 cm−1–1700 cm−1, and (iii) 2700 cm−1–3000 cm−1 showed 100 % accuracy, sensitivity, and specificity. Differences in the spectral dynamic showed that differences in the amide II and amide I regions were the most significant in distinguishing between PM and healthy subjects. Importantly, until now, the efficacy of Raman spectroscopy has not been established in clinical diagnostics of PM disease using the correlation between Raman spectra and PM clinical prognostic scoring. Continuing, our results showed the correlation between Raman signals and bone marrow fibrosis, as well as JAKV617F. Consequently, the results revealed that Raman spectroscopy has a high potential for use in medical laboratory diagnostics to quantify multiple biomarkers simultaneously, especially in the selected Raman regions.

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来源期刊
CiteScore
11.10
自引率
0.00%
发文量
133
审稿时长
42 days
期刊介绍: The mission of Nanomedicine: Nanotechnology, Biology, and Medicine (Nanomedicine: NBM) is to promote the emerging interdisciplinary field of nanomedicine. Nanomedicine: NBM is an international, peer-reviewed journal presenting novel, significant, and interdisciplinary theoretical and experimental results related to nanoscience and nanotechnology in the life and health sciences. Content includes basic, translational, and clinical research addressing diagnosis, treatment, monitoring, prediction, and prevention of diseases.
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