| Literature DB >> 35316928 |
Hossein Haghbin1, Muhammad Aziz2.
Abstract
Artificial intelligence (AI) is the timeliest field of computer science and attempts to mimic cognitive function of humans to solve problems. In the era of "Big data", there is an ever-increasing need for AI in all aspects of medicine. Cholangiocarcinoma (CCA) is the second most common primary malignancy of liver that has shown an increase in incidence in the last years. CCA has high mortality as it is diagnosed in later stages that decreases effect of surgery, chemotherapy, and other modalities. With technological advancement there is an immense amount of clinicopathologic, genetic, serologic, histologic, and radiologic data that can be assimilated together by modern AI tools for diagnosis, treatment, and prognosis of CCA. The literature shows that in almost all cases AI models have the capacity to increase accuracy in diagnosis, treatment, and prognosis of CCA. Most studies however are retrospective, and one study failed to show AI benefit in practice. There is immense potential for AI in diagnosis, treatment, and prognosis of CCA however limitations such as relative lack of studies in use by human operators in improvement of survival remains to be seen. ©The Author(s) 2022. Published by Baishideng Publishing Group Inc. All rights reserved.Entities:
Keywords: Artificial intelligence; Cholangiocarcinoma; Diagnosis; Machine learning; Prognosis; Treatment
Year: 2022 PMID: 35316928 PMCID: PMC8894273 DOI: 10.5306/wjco.v13.i2.125
Source DB: PubMed Journal: World J Clin Oncol ISSN: 2218-4333
Figure 1Application of artificial intelligence in addressing cholangiocarcinoma. LR: Logistic regression; SVM: Support-vector machine.
Advantages and disadvantages of artificial intelligence models used for cholangiocarcinoma diagnosis in radiology
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| Logistic regression | US/CT | Interpretable | Low precision |
| Support-vector machine | US/CT/MRI | Avoids overlearning and dimension disaster problems | Prone to missing data |
| Extreme learning machine | CT | Does not need high amount of data for training | Slow processing speed |
| Artificial neural network | CT/MRI | High generalization power | Needs long training time |
| Convolutional neural network | US/CT/MRI | Higher efficacy and speed as there is no need to compute features as first step | Needs large training data |
AI: Artificial intelligence; CT: Computed tomography; MRI: Magnetic resonance imaging; US: Ultrasound.
Studies utilizing artificial intelligence in the diagnosis of cholangiocarcinoma
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| Chu | 2021 | Radiomics using CT images for preoperative prediction of futile resection in intrahepatic cholangiocarcinoma | CT | LR |
| Ibragimov | 2020 | Deep learning for identification of critical regions associated with toxicities after liver stereotactic body radiation therapy | CT | CNN |
| Liu | 2021 | Can machine learning radiomics provide pre-operative differentiation of combined hepatocellular cholangiocarcinoma from hepatocellular carcinoma and cholangiocarcinoma to inform optimal treatment planning? | MRI, CT | SVM |
| Logeswaran[ | 2009 | Cholangiocarcinoma--an automated preliminary detection system using MLP | MRCP | ANN |
| Midya | 2018 | Deep convolutional neural network for the classification of hepatocellular carcinoma and intrahepatic cholangiocarcinoma | CT | CNN |
| Nakai | 2021 | Convolutional neural network for classifying primary liver cancer based on triple-phase CT and tumor marker information: a pilot study | CT, tumor markers | CNN |
| Negrini | 2020 | Machine Learning Model Comparison in the Screening of Cholangiocarcinoma Using Plasma Bile Acids Profiles | Serum bile acids | ML |
| Pattanapairoj | 2015 | Improve discrimination power of serum markers for diagnosis of cholangiocarcinoma using data mining-based approach | Tumor markers | ANN |
| Peng | 2020 | Preoperative Ultrasound Radiomics Signatures for Noninvasive Evaluation of Biological Characteristics of Intrahepatic Cholangiocarcinoma | US | SVM |
| Peng | 2020 | Ultrasound-Based Radiomics Analysis for Preoperatively Predicting Different Histopathological Subtypes of Primary Liver Cancer | US | Radiomics |
| Ponnoprat | 2020 | Classification of hepatocellular carcinoma and intrahepatic cholangiocarcinoma based on multi-phase CT scans | CT | CNN |
| Selvathi | 2013 | Automatic segmentation and classification of liver tumor in CT images using adaptive hybrid technique and Contourlet based ELM classifier | CT | ELM |
| Sun | 2021 | Diagnosis of cholangiocarcinoma from microscopic hyperspectral pathological dataset by deep convolution neural networks | Histology | CNN |
| Urman | 2020 | Pilot Multi-Omic Analysis of Human Bile from Benign and Malignant Biliary Strictures: A Machine-Learning Approach | Bile acids, lipids | ANN |
| Uyumazturk | 2019 | Deep learning for the digital pathologic diagnosis of cholangiocarcinoma and hepatocellular carcinoma: evaluating the impact of a web-based diagnostic assistant | Histology | DL |
| Wang | 2020 | SCCNN: A Diagnosis Method for Hepatocellular Carcinoma and Intrahepatic Cholangiocarcinoma Based on Siamese Cross Contrast Neural Network | CT | ANN |
| Wang | 2019 | Deep learning for liver tumor diagnosis part II: convolutional neural network interpretation using radiologic imaging features | MRI | DL |
| Xu | 2019 | A radiomics approach based on support vector machine using MR images for preoperative lymph node status evaluation in intrahepatic cholangiocarcinoma | MRI | SVM |
| Xu | 2021 | Differentiation of Intrahepatic Cholangiocarcinoma and Hepatic Lymphoma Based on Radiomics and Machine Learning in Contrast-Enhanced Computer Tomography | Contrast enhanced CT | ML |
| Yang | 2020 | Radiomics model of magnetic resonance imaging for predicting pathological grading and lymph node metastases of extrahepatic cholangiocarcinoma | MRI | Radiomics |
| Yao | 2020 | A Novel Approach to Assessing Differentiation Degree and Lymph Node Metastasis of Extrahepatic Cholangiocarcinoma: Prediction Using a Radiomics-Based Particle Swarm Optimization and Support Vector Machine Model | MRI | SVM |
| Yasaka | 2018 | Deep Learning with Convolutional Neural Network for Differentiation of Liver Masses at Dynamic Contrast-enhanced CT: A Preliminary Study | CT | CNN |
| Zhang | 2020 | Differentiation combined hepatocellular and cholangiocarcinoma from intrahepatic cholangiocarcinoma based on radiomics machine learning | CT | Radiomics |
| Zhao | 2020 | CUP-AI-Dx: A tool for inferring cancer tissue of origin and molecular subtype using RNA gene-expression data and artificial intelligence | Tissue biopsy | CNN |
| Zhou | 2021 | Automatic Detection and Classification of Focal Liver Lesions Based on Deep Convolutional Neural Networks: A Preliminary Study | Multiphasic CT | CNN |
AI: Artificial intelligence; ANN: Artificial Neural Network; CCA: Cholangiocarcinoma; CNN: Convolutional neural network; CT: Computed tomography; DL: deep learning; ML: machine learning; ELM: Extreme learning machine; LR: Logistic regression; MRCP: Magnetic resonance cholangiopancreatography; MRI: Magnetic resonance imaging; SVM: Support-vector machine, US: Ultrasound.
Studies utilizing artificial intelligence in the treatment and prognostication of cholangiocarcinoma
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| Jeong | 2020 | Latent Risk Intrahepatic Cholangiocarcinoma Susceptible to Adjuvant Treatment After Resection: A Clinical Deep Learning Approach | CT, albumin, platelets, Diabetes, CA 19-9 | ML |
| Ji | 2019 | Biliary Tract Cancer at CT: A Radiomics-based Model to Predict Lymph Node Metastasis and Survival Outcomes | CT reported LN features | ANN |
| Li | 2020 | A Novel Prognostic Scoring System of Intrahepatic Cholangiocarcinoma With Machine Learning Basing on Real-World Data | CEA, CA 19-9, tumor stage | ML |
| Muller | 2021 | Survival Prediction in Intrahepatic Cholangiocarcinoma: A Proof-of-Concept Study Using Artificial Intelligence for Risk Assessment | Tumor size, tumor boundary, serology | ANN |
| Shao | 2018 | Artificial Neural Networking Model for the Prediction of Early Occlusion of Bilateral Plastic Stent Placement for Inoperable Hilar Cholangiocarcinoma | Tumor size, nodal involvement | ANN |
| Tang | 2021 | The preoperative prognostic value of the radiomics nomogram based on CT combined with machine learning in patients with intrahepatic cholangiocarcinoma | Tumor size, cirrhosis in CT | Radiomics |
| Tsilimigras | 2020 | A Novel Classification of Intrahepatic Cholangiocarcinoma Phenotypes Using Machine Learning Techniques: An International Multi-Institutional Analysis | Tumor size, nodal involvement, serology | ML |
AI: Artificial intelligence; ANN: Artificial Neural Network; CA 19-9: Carbohydrate antigen 19-9; CCA: Cholangiocarcinoma; CEA: Carcinoembryonic antigen; CT: Computed tomography; ML: Machine learning.