Baba Shogo, Kawasaki Tadatoshi, Hirano Satoshi, Nakamura Toru, Asano Toshimichi, Okazaki Ryo, Yoshida Koji, Kawase Tomoya, Kurahara Hiroshi, Oi Hideyuki, Yokoyama Masaya, Kita Junji, Imura Johji, Kinoshita Kazuya, Kondo Shunsuke, Okada Mao, Satake Tomoyuki, Igawa Yukiko Shimoda, Yoshida Tatsuya, Yamaguchi Hiroki, Ando Yoriko, Mizunuma Mika, Ichikawa Yuki, Hida Kyoko, Nishihara Hiroshi, Kato Yasutaka
Department of Pathology and Genetics, Laboratory of Cancer Medical Science, Hokuto Hospital, Obihiro, Hokkaido, Japan.
Department of Health Screenings, Hokuto Hospital, Obihiro, Hokkaido, Japan.
EClinicalMedicine. 2024 Nov 12;78:102936. doi: 10.1016/j.eclinm.2024.102936. eCollection 2024 Dec.
Pancreatic cancer is highly aggressive and has a low survival rate primarily due to late-stage diagnosis and the lack of effective early detection methods. We introduce here a novel, noninvasive urinary extracellular vesicle miRNA-based assay for the detection of pancreatic cancer from early to late stages.
From September 2019 to July 2023, Urine samples were collected from patients with pancreatic cancer (n = 153) from five distinct sites (Hokuto Hospital, Kawasaki Medical School Hospital, National Cancer Center Hospital, Kagoshima University Hospital, and Kumagaya General Hospital) and non-cancer participants (n = 309) from two separate sites (Hokuto Hospital and Omiya City Clinic). The main inclusion criteria included a diagnosis of pancreatic cancer based on pathological or imaging examination, while multiple primary cancers were excluded. Extracellular vesicles were enriched using a polymer-based precipitation method, and miRNAs were comprehensively analyzed by small RNA sequencing. A machine learning model for pancreatic cancer detection was developed using a training dataset (n = 315) consisting of 99 pancreatic cancer participants (of which 33 were early-stage [I/IIA]) and 216 non-cancer participants, and validated with a test dataset (n = 147) consisting of 54 pancreatic cancer participants (of which 9 were early-stage [I/IIA]) and 93 non-cancer participants.
This method showed consistent performance, with areas under the receiver operating characteristic curves of 0.972 (95% confidence interval [CI], 0.928-0.996) and 0.963 (95% CI, 0.932-0.988) in the training and test sets, respectively. The sensitivities for pancreatic cancer detection were 93.9% (95% CI, 87.5%-97.3%) and 77.8% (95% CI, 64.9%-87.3%) overall and 97.0% (95% CI, 83.9%-99.8%) and 77.8% (95% CI, 44.2%-95.9%) for stage I/IIA pancreatic cancer, respectively. The specificities were 91.7% (95% CI, 87.1%-94.7%) and 95.7% (95% CI, 89.4%-98.5%), respectively. We also evaluated the sensitivity of CA19-9 for pancreatic cancer detection in 140 patients with pancreatic cancer, and it was 37.5% (95% CI, 23.5%-53.8%) for stages I/IIA pancreatic cancer. Performance in early-stage cancer detection was significantly higher for miRNA-based pancreatic cancer detection. Functional enrichment analysis of pancreatic cancer-associated urinary miRNAs revealed that the urinary miRNA signature reflects miRNA patterns of the pancreatic cancer tissue itself as well as those of the tumor microenvironment.
Urinary extracellular vesicle miRNAs may reflect signals from both tumor cells and their microenvironment, offering a unique opportunity for detection of pancreatic cancer from early to late stages. While this study has a limitation due to the relatively small sample size, our approach has the potential to contribute to treatment outcomes through population screening. Our primary goal is to make this assay more accessible to a broader population, particularly in areas with limited hospital access where cancer is often detected at a late stage, leveraging the advantage of using urine samples that can be collected at home.
This research was supported by the Japan Agency for Medical Research and Development (AMED) under Grant Number JP24he2302007 and Craif Inc.
胰腺癌具有高度侵袭性,生存率低,主要原因是晚期诊断以及缺乏有效的早期检测方法。我们在此介绍一种基于尿液细胞外囊泡微小RNA(miRNA)的新型非侵入性检测方法,用于从早期到晚期检测胰腺癌。
2019年9月至2023年7月,从五个不同地点(北斗医院、川崎医科大学医院、国立癌症中心医院、鹿儿岛大学医院和熊谷综合医院)的胰腺癌患者(n = 153)以及两个不同地点(北斗医院和大宫市诊所)的非癌症参与者(n = 309)中收集尿液样本。主要纳入标准包括基于病理或影像学检查诊断为胰腺癌,同时排除多原发性癌症。使用基于聚合物的沉淀方法富集细胞外囊泡,并通过小RNA测序全面分析miRNA。使用由99名胰腺癌参与者(其中33名是早期[I/IIA期])和216名非癌症参与者组成的训练数据集(n = 315)开发用于胰腺癌检测的机器学习模型,并用由54名胰腺癌参与者(其中9名是早期[I/IIA期])和93名非癌症参与者组成的测试数据集(n = 147)进行验证。
该方法表现出一致的性能,训练集和测试集的受试者操作特征曲线下面积分别为0.972(95%置信区间[CI],0.928 - 0.996)和0.963(95% CI,0.932 - 0.988)。胰腺癌检测的总体敏感性分别为93.9%(95% CI,87.5% - 97.3%)和77.8%(95% CI,64.9% - 87.3%),I/IIA期胰腺癌的敏感性分别为97.0%(95% CI,83.9% - 99.8%)和77.8%(95% CI,44.2% - 95.9%)。特异性分别为91.7%(95% CI,87.1% - 94.7%)和95.7%(95% CI,89.4% - 98.5%)。我们还评估了140例胰腺癌患者中CA19 - 9检测胰腺癌的敏感性,I/IIA期胰腺癌的敏感性为37.5%(95% CI,23.5% - 53.8%)。基于miRNA的胰腺癌检测在早期癌症检测中的性能明显更高。对胰腺癌相关尿液miRNA的功能富集分析表明,尿液miRNA特征反映了胰腺癌组织本身以及肿瘤微环境的miRNA模式。
尿液细胞外囊泡miRNA可能反映肿瘤细胞及其微环境的信号,为从早期到晚期检测胰腺癌提供了独特的机会。虽然本研究由于样本量相对较小存在局限性,但我们的方法有可能通过人群筛查改善治疗结果。我们的主要目标是使这种检测方法更易于广大人群使用,特别是在医院就诊机会有限且癌症往往在晚期才被发现的地区,利用尿液样本可在家中采集的优势。
本研究由日本医疗研究与开发机构(AMED)资助,资助编号为JP24he2302007,以及Craif公司。