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脂质组学分析结合机器学习可识别间质性膀胱炎/膀胱疼痛综合征患者独特的尿液脂质特征。

Lipidomic analysis coupled with machine learning identifies unique urinary lipid signatures in patients with interstitial cystitis/bladder pain syndrome.

作者信息

Iwaki Takuya, Kurano Makoto, Sumitani Masahiko, Niimi Aya, Nomiya Akira, Kamei Jun, Taguchi Satoru, Yamada Yuta, Sato Yusuke, Nakamura Masaki, Yamada Daisuke, Minagawa Tomonori, Fukuhara Hiroshi, Kume Haruki, Homma Yukio, Akiyama Yoshiyuki

机构信息

Department of Urology, Graduate School of Medicine, The University of Tokyo, Tokyo, Japan.

Department of Urology, Chiba Tokushukai Hospital, Chiba, Japan.

出版信息

World J Urol. 2025 Apr 18;43(1):233. doi: 10.1007/s00345-025-05628-y.

Abstract

PURPOSE

To identify biomarkers for diagnosis and classification of interstitial cystitis/bladder pain syndrome (IC/BPS) by urinary lipidomics coupled with machine learning.

METHODS

Urine samples from 138 patients with IC/BPS, including 116 with Hunner lesion (HL) and 22 with no HL, and 71 controls were assessed by lipid chromatography-tandem mass spectrometry. Single and paired lipid analyses of differentially expressed lipids in each group were conducted to assess their diagnostic ability. Machine learning models were constructed based on the identified urinary lipids and patient demographic data, and a five-fold cross-validation method was applied for internal validation. Levels of urinary lipids were adjusted to account for urinary creatinine levels.

RESULTS

A total of 218 urinary lipids were identified. Single lipid analysis revealed that urinary levels of C24 ceramide and LPC (14:0) distinguished HL and no HL, with an area under the receiver operating characteristics curve of 0.792 and 0.656, respectively. Paired lipid analysis revealed that summed urinary levels of C24 ceramide and LPI (18:3), and subtraction of PG (36:5) from PC (38:2) distinguished HL and no HL even more accurately, with an area under the curve of 0.805 and 0.752, respectively. A machine learning model distinguished HL and no HL, with the highest area under the curve being 0.873 and 0.750, respectively. Limitations include the opaque black box nature of machine learning techniques.

CONCLUSIONS

Urinary levels of C24 ceramide, along with those of C24 ceramide plus LPI (18:3), could be potential biomarkers for HL. Machine learning-coupled urinary lipidomics may play an important role in the next-generation AI- driven diagnostic systems for IC/BPS.

摘要

目的

通过尿脂质组学结合机器学习来识别间质性膀胱炎/膀胱疼痛综合征(IC/BPS)诊断和分类的生物标志物。

方法

采用脂质色谱-串联质谱法评估138例IC/BPS患者(包括116例有Hunner病变(HL)和22例无HL)以及71例对照的尿液样本。对每组中差异表达脂质进行单脂质和配对脂质分析,以评估其诊断能力。基于鉴定出的尿脂质和患者人口统计学数据构建机器学习模型,并采用五折交叉验证法进行内部验证。对尿脂质水平进行调整以校正尿肌酐水平。

结果

共鉴定出218种尿脂质。单脂质分析显示,C24神经酰胺和LPC(14:0)的尿水平可区分HL和无HL,其受试者工作特征曲线下面积分别为0.792和0.656。配对脂质分析显示,C24神经酰胺和LPI(18:3)的尿水平总和,以及PC(38:2)减去PG(36:5)能更准确地区分HL和无HL,曲线下面积分别为0.805和0.752。机器学习模型能区分HL和无HL,曲线下面积最高分别为0.873和0.750。局限性包括机器学习技术的不透明黑箱性质。

结论

C24神经酰胺的尿水平,以及C24神经酰胺加LPI(18:3)的尿水平,可能是HL的潜在生物标志物。机器学习结合的尿脂质组学可能在下一代人工智能驱动的IC/BPS诊断系统中发挥重要作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a090/12008056/208bc774b2a7/345_2025_5628_Fig1_HTML.jpg

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