胆道肿瘤诊治数智化进展和未来研究方向

刘颖斌, 孙旭恒, 王一钧, 张薇

中国实用外科杂志 ›› 2026, Vol. 46 ›› Issue (1) : 29-34.

PDF(1270 KB)
PDF(1270 KB)
中国实用外科杂志 ›› 2026, Vol. 46 ›› Issue (1) : 29-34. DOI: 10.19538/j.cjps.issn1005-2208.2026.01.07
述评·普通外科进展

胆道肿瘤诊治数智化进展和未来研究方向

作者信息 +

Digital Intelligence in biliary tract cancers diagnosis and treatment: advances and future directions

Author information +
文章历史 +

摘要

随着信息数字化与人工智能的发展,数智化技术有望提高胆道肿瘤的诊治水平。胆道肿瘤诊治数智化历经三个阶段,即诊治全流程规范化、全疾病周期信息数字化、基于充分数据的智能化。数智化技术目前已在胆道肿瘤的早期诊断与鉴别诊断、术前评估与术中导航、术后并发症与预后预测等方面取得显著进展。胆道肿瘤诊治数智化的未来发展有赖于构建全疾病周期大型数据集,推动基于人工智能的多模态数据深度融合,优化算法,开发和普及数智化诊治工具,实现胆道肿瘤诊疗从局部最优到整体最优的发展。

Abstract

With the development of information digitalization and artificial intelligence, digital-intelligence technology is expected to improve the diagnosis and treatment of biliary tract cancers(BTCs). The digital-intelligent development of biliary tract cancer diagnosis and treatment has gone through three stages: standardization of diagnosis and treatment process throughout the full cycle, digitalization of information throughout the full disease cycle, and intelligentization based on sufficient data. Currently, digital-intelligence technology has achieved remarkable progress in early diagnosis and differential diagnosis, preoperative evaluation and intraoperative navigation, as well as postoperative complication and prognosis prediction of BTCs. The future development of digital-intelligence in BTCs diagnosis and treatment relies on establishing large-scale datasets covering the full disease cycle, promoting in-depth fusion of multimodal data based on artificial intelligence, optimizing algorithms, and developing and popularizing digital-intelligent diagnosis and treatment tools, thereby realizing the transformation of BTCs diagnosis and treatment from local optimization to global optimization.

关键词

数字化 / 人工智能 / 数智化 / 胆道肿瘤 / 全疾病周期

Key words

digitalization / artificial intelligence / digital-intelligence / biliary tract cancers (BTCs) / full disease cycle

引用本文

导出引用
刘颖斌, 孙旭恒, 王一钧, . 胆道肿瘤诊治数智化进展和未来研究方向[J]. 中国实用外科杂志. 2026, 46(1): 29-34 https://doi.org/10.19538/j.cjps.issn1005-2208.2026.01.07
LIU Ying-bin, SUN Xu-heng, WANG Yi-jun, et al. Digital Intelligence in biliary tract cancers diagnosis and treatment: advances and future directions[J]. Chinese Journal of Practical Surgery. 2026, 46(1): 29-34 https://doi.org/10.19538/j.cjps.issn1005-2208.2026.01.07
中图分类号: R6   

参考文献

[1]
王秉. 何为数智:数智概念的多重含义研究[J]. 情报杂志, 2023, 42(7): 71-76. DOI: 10.3969/j.issn.1002-1965.2023.07.011.
[2]
陈国青, 任明, 卫强, 等. 数智赋能:信息系统研究的新跃迁[J]. 管理世界, 2022, 38(1): 180-196. DOI: 10.19744/j.cnki.11-1235/f.2022.0011.
[3]
刘温馨. 从“数字化”到“数智化”[N]. 人民日报,2025-11-26(18).
[4]
Sun X, Liu J, Zhang W, et al. Disease burden of biliary tract cancer in 204 countries and territories, 1990-2021: A comprehensive demographic analysis of the Global Burden of Disease Study 2021[J]. Chin Med J (Engl), 2024, 137(24): 3117-3125. DOI: 10.1097/CM9.0000000000003395.
[5]
Wang X, Bai Y, Chai N, et al. Chinese national clinical practice guideline on diagnosis and treatment of biliary tract cancers[J]. Chin Med J (Engl), 2024, 137(19): 2272-2293. DOI: 10.1097/CM9.0000000000003258.
[6]
Zhang W, Wang YJ, Liu JM, et al. Burden of biliary tract carcinoma in China (1990-2021): Findings from the 2021 Global Burden of Disease Study[J]. Sci Bull (Beijing), 2024, 69(22): 3547-3557. DOI: 10.1016/j.scib.2024.09.026.
[7]
刘颖斌, 孙旭恒, 王一钧, 等. 以胆道肿瘤为例浅谈基于外科中心的非高发肿瘤专病队列建设[J]. 中华外科杂志, 2025, 63(4): 276-283. DOI: 10.3760/cma.j.cn112139-20241225-00588.
[8]
孙旭恒, 任泰, 耿亚军, 等. 中国胆囊癌外科治疗现状与病理学特征多中心回顾性研究(附4345例报告)[J]. 中国实用外科杂志, 2021, 41(1): 99-106. DOI: 10.19538/j.cjps.issn1005-2208.2021.01.18.
[9]
孙旭恒, 王一钧, 张薇, 等. 中国胆囊癌流行病学特征与诊治及预后分析(附6 159例报告) [J]. 中华消化外科杂志, 2022, 21(1): 114-128. DOI: 10.3760/cma.j.cn115610-20220103-00004.
[10]
王一钧, 孙旭恒, 冯佳毅, 等. 2010-2017年中国胆囊癌诊治流程与预后分析(附7874例报告)[J]. 中国实用外科杂志, 2024, 44(9): 1038-1054,1061. DOI: 10.19538/j.cjps.issn1005-2208.2024.09.14.
[11]
Marya NB, Powers PD, Bois MC, et al. Utilization of an artificial intelligence-enhanced, web-based application to review bile duct brushing cytologic specimens: A pilot study[J]. Cancer Cytopathol, 2024, 132(12): 779-787. DOI: 10.1002/cncy.22898.
The authors previously developed an artificial intelligence (AI) to assist cytologists in the evaluation of digital whole‐slide images (WSIs) generated from bile duct brushing specimens. The aim of this trial was to assess the efficiency and accuracy of cytologists using a novel application with this AI tool.
[12]
Gao W, Wang W, Song D, et al. A multiparametric fusion deep learning model based on DCE-MRI for preoperative prediction of microvascular invasion in intrahepatic cholangiocarcinoma[J]. J Magn Reson Imaging, 2022, 56(4): 1029-1039. DOI: 10.1002/jmri.28126.
Assessment of microvascular invasion (MVI) in intrahepatic cholangiocarcinoma (ICC) by using a noninvasive method is an unresolved issue. Deep learning (DL) methods based on multiparametric fusion of MR images have the potential of preoperative assessment of MVI.
[13]
Li Y, Shi X, Yang L, et al. MC-GAT: multi-layer collaborative generative adversarial transformer for cholangiocarcinoma classification from hyperspectral pathological images[J]. Biomed Opt Express, 2022, 13(11): 57945-812. DOI: 10.1364/BOE.472106.
[14]
中国抗癌协会. 中国恶性肿瘤整合诊治指南:胆囊癌[J]. 肿瘤, 2022, 42(3): 188-202. DOI: 10.3781/j.issn.1000-7431.2022.2112-0938.
[15]
Matheny ME, Whicher D, Thadaney Israni S. Artificial intelligence in health care: a report From the National Academy of Medicine[J]. JAMA, 2020, 323(6): 509-510. DOI: 10.1001/jama.2019.21579.
[16]
Dar FS, Abbas Z, Ahmed I, et al. National guidelines for the diagnosis and treatment of hilar cholangiocarcinoma[J]. World J Gastroenterol, 2024, 30(9): 1018-1042. DOI: 10.3748/wjg.v30.i9.1018.
A consensus meeting of national experts from all major national hepatobiliary centres in the country was held on May 26, 2023, at the Pakistan Kidney and Liver Institute & Research Centre (PKLI & RC) after initial consultations with the experts. The Pakistan Society for the Study of Liver Diseases (PSSLD) and PKLI & RC jointly organised this meeting. This effort was based on a comprehensive literature review to establish national practice guidelines for hilar cholangiocarcinoma (hCCA). The consensus was that hCCA is a complex disease and requires a multidisciplinary team approach to best manage these patients. This coordinated effort can minimise delays and give patients a chance for curative treatment and effective palliation. The diagnostic and staging workup includes high-quality computed tomography, magnetic resonance imaging, and magnetic resonance cholangiopancreatography. Brush cytology or biopsy utilizing endoscopic retrograde cholangiopancreatography is a mainstay for diagnosis. However, histopathologic confirmation is not always required before resection. Endoscopic ultrasound with fine needle aspiration of regional lymph nodes and positron emission tomography scan are valuable adjuncts for staging. The only curative treatment is the surgical resection of the biliary tree based on the Bismuth-Corlette classification. Selected patients with unresectable hCCA can be considered for liver transplantation. Adjuvant chemotherapy should be offered to patients with a high risk of recurrence. The use of preoperative biliary drainage and the need for portal vein embolisation should be based on local multidisciplinary discussions. Patients with acute cholangitis can be drained with endoscopic or percutaneous biliary drainage. Palliative chemotherapy with cisplatin and gemcitabine has shown improved survival in patients with irresectable and recurrent hCCA.
[17]
Müller L, Mähringer-Kunz A, Gairing SJ, et al. Survival prediction in intrahepatic cholangiocarcinoma: a proof of concept study using artificial intelligence for risk assessment[J]. J Clin Med, 2021, 10(10):2071. DOI: 10.3390/jcm10102071.
[18]
Li Z, Yuan L, Zhang C, et al. A novel prognostic scoring system of intrahepatic cholangiocarcinoma with machine learning basing on real-world data[J]. Front Oncol, 2020, 10: 576901. DOI: 10.3389/fonc.2020.576901.
Currently, the prognostic performance of the staging systems proposed by the 8th edition of the American Joint Committee on Cancer (AJCC 8th) and the Liver Cancer Study Group of Japan (LCSGJ) in resectable intrahepatic cholangiocarcinoma (ICC) remains controversial. The aim of this study was to use machine learning techniques to modify existing ICC staging strategies based on clinical data and to demonstrate the accuracy and discrimination capacity in prognostic prediction.
[19]
Zhang X, Wang Z, Tang W, et al. Ultrasensitive and affordable assay for early detection of primary liver cancer using plasma cell-free DNA fragmentomics[J]. Hepatology, 2022, 76(2): 317-329. DOI: 10.1002/hep.32308.
Early detection of primary liver cancer (PLC), including HCC, intrahepatic cholangiocarcinoma (ICC), and combined HCC‐ICC (cHCC‐ICC), is essential for patients’ survival. This study aims to develop an accurate and affordable method for PLC early detection and differentiating ICC from HCC using plasma cell‐free DNA (cfDNA) fragmentomic profiles.
[20]
Ren S, Li Q, Liu S, et al. Clinical value of machine learning-based ultrasomics in preoperative differentiation between hepatocellular carcinoma and intrahepatic cholangiocarcinoma: a multicenter study[J]. Front Oncol, 2021, 11: 749137. DOI: 10.3389/fonc.2021.749137.
This study aims to explore the clinical value of machine learning-based ultrasomics in the preoperative noninvasive differentiation between hepatocellular carcinoma (HCC) and intrahepatic cholangiocarcinoma (ICC).
[21]
Ahmadzadeh AM, Lomer NB, Torigian DA. Radiomics and machine learning models for diagnosing microvascular invasion in cholangiocarcinoma: a systematic review and meta-analysis of diagnostic test accuracy studies[J]. Clin Imaging, 2025, 121: 110456. DOI: 10.1016/j.clinimag.2025.110456.
[22]
尹梓名, 王荣钦, 杨自逸, 等. 基于图神经网络的胆囊癌CT影像辅助诊断模型[J]. 上海交通大学学报(医学版), 2025, 45(9): 1221-1231. DOI: 10.3969/j.issn.1674-8115.2025.09.014.
[23]
Wu XA, Su H, Hua Y, et al. A multi-phase ct dataset for automated differential diagnosis of liver tumors[J]. Sci Data, 2025, 12(15).Online ahead of print. DOI: 10.1038/s41597-025-06343-4.
[24]
Mascarenhas M, Almeida MJ, González-Haba M, et al. Artificial intelligence for automatic diagnosis and pleomorphic morphological characterization of malignant biliary strictures using digital cholangioscopy[J]. Sci Rep, 2025, 15(1): 5447. DOI: 10.1038/s41598-025-87279-y.
[25]
Watcharatanyatip K, Chutipongtanate S, Chokchaichamnankit D, et al. Translational proteomic approach for cholangiocarcinoma biomarker discovery, validation, and multiplex assay development: a pilot study[J]. Molecules, 2022, 27(18):5904. DOI: 10.3390/molecules27185904.
Cholangiocarcinoma (CCA) is a highly lethal disease because most patients are asymptomatic until they progress to advanced stages. Current CCA diagnosis relies on clinical imaging tests and tissue biopsy, while specific CCA biomarkers are still lacking. This study employed a translational proteomic approach for the discovery, validation, and development of a multiplex CCA biomarker assay. In the discovery phase, label-free proteomic quantitation was performed on nine pooled plasma specimens derived from nine CCA patients, nine disease controls (DC), and nine normal individuals. Seven proteins (S100A9, AACT, AFM, and TAOK3 from proteomic analysis, and NGAL, PSMA3, and AMBP from previous literature) were selected as the biomarker candidates. In the validation phase, enzyme-linked immunosorbent assays (ELISAs) were applied to measure the plasma levels of the seven candidate proteins from 63 participants: 26 CCA patients, 17 DC, and 20 normal individuals. Four proteins, S100A9, AACT, NGAL, and PSMA3, were significantly increased in the CCA group. To generate the multiplex biomarker assays, nine machine learning models were trained on the plasma dynamics of all seven candidates (All-7 panel) or the four significant markers (Sig-4 panel) from 45 of the 63 participants (70%). The best-performing models were tested on the unseen values from the remaining 18 (30%) of the 63 participants. Very strong predictive performances for CCA diagnosis were obtained from the All-7 panel using a support vector machine with linear classification (AUC = 0.96; 95% CI 0.88–1.00) and the Sig-4 panel using partial least square analysis (AUC = 0.94; 95% CI 0.82–1.00). This study supports the use of the composite plasma biomarkers measured by clinically compatible ELISAs coupled with machine learning models to identify individuals at risk of CCA. The All-7 and Sig-4 assays for CCA diagnosis should be further validated in an independent prospective blinded clinical study.
[26]
Yang M, Zhao Y, Li C, et al. Multimodal integration of liquid biopsy and radiology for the noninvasive diagnosis of gallbladder cancer and benign disorders[J]. Cancer Cell, 2025, 43(3): 398-412.e4. DOI: 10.1016/j.ccell.2025.02.011.
Gallbladder cancer (GBC) frequently mimics gallbladder benign lesions (GBBLs) in radiological images, leading to preoperative misdiagnoses. To address this challenge, we initiated a prospective, multicenter clinical trial (ChicCTR2100049249) and proposed a multimodal, non-invasive diagnostic model to distinguish GBC from GBBLs. A total of 301 patients diagnosed with gallbladder-occupying lesions (GBOLs) from 11 medical centers across 7 provinces in China were enrolled and divided into a discovery cohort and an independent external validation cohort. An artificial intelligence (AI)-based integrated model, GBCseeker, is created using cell-free DNA (cfDNA) genetic signatures, radiomic features, and clinical information. It achieves high accuracy in distinguishing GBC from GBBL patients (93.33% in the discovery cohort and 87.76% in the external validation cohort), reduces surgeons' diagnostic errors by 56.24%, and reclassifies GBOL patients into three categories to guide surgical options. Overall, our study establishes a tool for the preoperative diagnosis of GBC, facilitating surgical decision-making.Copyright © 2025 Elsevier Inc. All rights reserved.
[27]
耿小平. 人工智能时代肝胆胰外科微创技术与开放手术之争[J]. 中国实用外科杂志, 2022, 42(8): 845-849. DOI:10.19538/j.cjps.issn1005-2208.2022.08.02.
[28]
祝文, 曾小军, 胡浩宇, 等. 应用增强现实与混合现实导航预防腹腔镜肝切除术中出血价值研究[J]. 中国实用外科杂志, 2022, 42(3): 298-302. DOI: 10.19538/j.cjps.issn1005-2208.2022.03.06.
[29]
董家鸿, 项灿宏, 白志清. 精准外科理念在胆囊癌治疗中的应用[J]. 中国实用外科杂志, 2023, 43(11): 1201-1207. DOI: 10.19538/j.cjps.issn1005-2208.2023.11.01.
[30]
方驰华, 陈青山. 数字智能化诊疗技术在围肝门胆道疾病术前评估中的意义[J]. 中国实用外科杂志, 2019, 39(2): 126-130. DOI: 10.19538/j.cjps.issn1005-2208.2019.02.06.
[31]
Zhou Y, Xie Y, Cai N, et al. mm3DSNet: multi-scale and multi-feedforward self-attention 3D segmentation network for CT scans of hepatobiliary ducts[J]. Med Biol Eng Comput, 2025, 63(1): 127-138. DOI: 10.1007/s11517-024-03183-z.
[32]
Kenig N, Monton Echeverria J, Muntaner Vives A. Artificial intelligence in surgery: a systematic review of use and validation[J]. J Clin Med, 2024, 13(23):7108.. DOI: 10.3390/jcm13237108.
Background: Artificial Intelligence (AI) holds promise for transforming healthcare, with AI models gaining increasing clinical use in surgery. However, new AI models are developed without established standards for their validation and use. Before AI can be widely adopted, it is crucial to ensure these models are both accurate and safe for patients. Without proper validation, there is a risk of integrating AI models into practice without sufficient evidence of their safety and accuracy, potentially leading to suboptimal patient outcomes. In this work, we review the current use and validation methods of AI models in clinical surgical settings and propose a novel classification system. Methods: A systematic review was conducted in PubMed and Cochrane using the keywords “validation”, “artificial intelligence”, and “surgery”, following PRISMA guidelines. Results: The search yielded a total of 7627 articles, of which 102 were included for data extraction, encompassing 2,837,211 patients. A validation classification system named Surgical Validation Score (SURVAS) was developed. The primary applications of models were risk assessment and decision-making in the preoperative setting. Validation methods were ranked as high evidence in only 45% of studies, and only 14% of the studies provided publicly available datasets. Conclusions: AI has significant applications in surgery, but validation quality remains suboptimal, and public data availability is limited. Current AI applications are mainly focused on preoperative risk assessment and are suggested to improve decision-making. Classification systems such as SURVAS can help clinicians confirm the degree of validity of AI models before their application in practice.
[33]
Xu L, Chen Z, Zhu D, et al. The Application status of radiomics-based machine learning in intrahepatic cholangiocarcinoma: systematic review and meta-analysis[J]. J Med Internet Res, 2025, 27: e69906. DOI: 10.2196/69906.
[34]
Chen J, Xi J, Chen T, et al. Diagnostic Performance of computed tomography-based artificial intelligence for early recurrence of cholangiocarcinoma: systematic review and meta-analysis[J]. J Med Internet Res, 2025, 27: e78306. DOI: 10.2196/78306.
[35]
Periáñez Á, Fernández Del Río A, Nazarov I, et al. The digital transformation in health: how ai can improve the performance of health systems[J]. Health Syst Reform, 2024, 10(2): 2387138. DOI: 10.1080/23288604.2024.2387138.
[36]
Zhu J, Liu X, Gao P. Digital intelligence technology: new quality productivity for precision traditional Chinese medicine[J]. Front Pharmacol, 2025, 16: 1526187. DOI: 10.3389/fphar.2025.1526187.
[37]
Yin Z, Chen T, Shu Y, et al. A Gallbladder cancer survival prediction model based on multimodal fusion analysis[J]. Dig Dis Sci, 2023, 68(5): 1762-1776. DOI: 10.1007/s10620-022-07782-4.
[38]
吴静, 王思源, 陈秋艳, 等. 人工智能随访和人工随访的一致性研究:以高血压共病糖尿病患者为例[J]. 中国卫生质量管理, 2025, 32(3): 92-96. DOI: 10.13912/j.cnki.chqm.2025.32.3.19.

基金

国家自然科学基金项目(32130036)
上海市卫生健康委员会卫生行业临床研究专项(202540164)

PDF(1270 KB)

Accesses

Citation

Detail

段落导航
相关文章

/