| Literature DB >> 34072804 |
Sanjeev B Khanagar1,2, Sachin Naik3, Abdulaziz Abdullah Al Kheraif3, Satish Vishwanathaiah4, Prabhadevi C Maganur4, Yaser Alhazmi5, Shazia Mushtaq6, Sachin C Sarode7, Gargi S Sarode7, Alessio Zanza8, Luca Testarelli8, Shankargouda Patil5.
Abstract
Oral cancer (OC) is a deadly disease with a high mortality and complex etiology. Artificial intelligence (AI) is one of the outstanding innovations in technology used in dental science. This paper intends to report on the application and performance of AI in diagnosis and predicting the occurrence of OC. In this study, we carried out data search through an electronic search in several renowned databases, which mainly included PubMed, Google Scholar, Scopus, Embase, Cochrane, Web of Science, and the Saudi Digital Library for articles that were published between January 2000 to March 2021. We included 16 articles that met the eligibility criteria and were critically analyzed using QUADAS-2. AI can precisely analyze an enormous dataset of images (fluorescent, hyperspectral, cytology, CT images, etc.) to diagnose OC. AI can accurately predict the occurrence of OC, as compared to conventional methods, by analyzing predisposing factors like age, gender, tobacco habits, and bio-markers. The precision and accuracy of AI in diagnosis as well as predicting the occurrence are higher than the current, existing clinical strategies, as well as conventional statistics like cox regression analysis and logistic regression.Entities:
Keywords: artificial intelligence; artificial neural networks; machine learning; oral cancer diagnosis; oral cancer prediction
Year: 2021 PMID: 34072804 PMCID: PMC8227647 DOI: 10.3390/diagnostics11061004
Source DB: PubMed Journal: Diagnostics (Basel) ISSN: 2075-4418
Description of the PICO (P = Population, I = Intervention, C = Comparison, O = Outcome) elements.
| Research question | What are the applications and performance of the artificial intelligence models that have been widely used in oral cancer diagnosis, and predicting the prognosis. |
| Population | Patients, clinical images, radiographs, datasets, and histological images. |
| Intervention | AI-based models for oral cancer diagnosis and predicting prognosis. |
| Comparison | Expert opinions and reference standards. |
| Outcome | Measurable or predictive outcomes such as accuracy, sensitivity, specificity, ROC = Receiver Operating Characteristic curve, AUC = Area Under the Curve, ICC = Intra-class Correlation Coefficient, PPV = Positive Predictive Values, and NPV = Negative Predictive Values. |
Figure 1Flow chart for screening and selection of articles.
Details of the studies that have used AI-based models for oral cancer diagnosis and predicting the prognosis.
| Sr. No. | Authors | Year of Publication | Algorithm | Study Design | Objective of the Study | No. of Images/Photographs for Testing | Study Factor | Modality | Comparison, If Any | Evaluation Accuracy/Average Accuracy | Results | Outcomes | Authors Suggestions/Conclusions |
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| 1 | Nayak et al. [ | 2005 | ANNs | Cross sectional study | Discriminating normal, potentially malignant, and malignant | 50 | Differentiating normal, potentially malignant, and malignant | Recorded spectra | Principal component analysis (PCA) | Accuracy 98.3%, specificity of 100% and sensitivity 96.5% | (+) Effective | ANN is found to be slightly better than PCA | This model is efficient |
| 2 | Tseng et al. [ | 2015 | ANNs | Cohort study | ANN for predicting oral cancer prognosis | - | Determining the differences between the symptoms shown in past cases | Datasets | Decision tree (DT) | Not Mentioned | (+) Effective | Both decision tree and artificial neural network models showed superiority to the traditional statistical model. | Decision tree models are relatively easier to interpret compared to artificial neural network models. |
| 3 | Uthoff et al. [ | 2017 | CNN’s | Crosssectional study | AI-based deep (CNNs) for early detection of pre-cancerous | 170 | Detection of pre-cancerous | Autofluorescence imaging (AFI) and white light | Specialist’s diagnosis | Sensitivities 85%, specificities 88.75%, positive predictive values 87.67%, and negative predictive values 85.49 | (+) Effective | CNN achieving high values of sensitivity, specificity, PPV, and | Performance should increase as additional images are collected. |
| 4 | Shams et al. [ | 2017 | CNN’s | Cross sectional comparative study | Deep Neural Network (DNN) for predicting the possibility of oral cancer development in Oral potentially malignant lesion patients | 10 | Oral cancer development in Oral potentially malignant lesion patients | Datasets | Support Vector Machine (SVM), Regularized Least Squares (RLS), Multi-Layer Perception (MLP) | High accuracy 96% | (+) Effective | The results show high accuracy using DNN than SVM and MLP | None |
| 5 | Jeyaraj et al. [ | 2019 | CNN’s | Cross sectional comparative study | Deep | 100 | Detection of pre-cancerous as benign and post cancerous as malignant | Hyperspectral | The traditional medical image classification algorithm | Accuracy of 91.4%, | (+) Effective | The quality of diagnosis is increased by proposed regression-based partitioned CNN learning | This deep learning |
| 6 | Fahed Jubair et al. [ | 2020 | CNN’s | Crosssectional study | Develop a lightweight deep CNN using Efficient net-B0 | 716 | Detecting oral cancer | Clinical images | None | accuracy | (+) Effective | AI can improve the quality and reach of oral cancer | This model of being small in size and |
| 7 | Sunny et al. [ | 2019 | ANNs | Cross sectional comparative study | Artificial Neural Network (ANN) based | 82 | Oral potentially malignant (OPML)/malignant | High-resolution cytology images | Conventional cytology and histology | 84–86% Accuracy | (+) Effective | ANN-based risk stratification model improved the detection sensitivity of malignant lesions (93%) and high-grade OPML (73%), increasing the overall accuracy by 30%. | This model can be an invaluable Point-of-Care (POC) tool for early detection/screening in oral cancer. |
| 8 | Jelena Musulin et al. [ | 2021 | ANNs | Cross sectional comparative study | Diagnosing OC using the histological image of a biopsy | 322 | Detecting oral cancer | Histological image | ResNet50, ResNet101 | Xception and SWT resulted in the highest classification | (+) Effective | The AI-based system has great potential in the diagnosis of OSCC | This cell shape and size, pathological mitoses, tumor-stroma ratio and |
| 9 | M. Praveena Kirubabai et al. [ | 2021 | CNN | Cross sectional study | To classify | 160 | Detecting oral cancer | Oral images | None | accuracy | (+) Effective | CNN has high accuracy in detecting OC | None |
| 10 | Jyoti Rathod et al. [ | 2019 | CNN’s | Cross sectional comparative study | Classify different stages of oral cancer using machine learning techniques | - | Diagnosing and classifying the premalignant lesion | Data set | SVM, KNN, MLP RSF, and Logistic Regression | DT 90.68%, RSF 91%, SVM 88%, KNN 85%, MLP 81% and Logistic Regression gives 80% of accuracy | (+) Effective | DT and RSF produced the same accuracy results | classification of oral cancer can be classified efficiently with help of Random Forest and Decision Tree |
| 11 | Alabi et al. [ | 2019 | ANNs | Cross sectional comparative study | Comparing the performance of four machine learning Models (ML) for Predicting Risk of recurrence of oral tongue squamous cell carcinoma (OTSCC) | 311 | Prediction of reoccurrence | Patient datasets | 5 Prognostic significance of the depth of invasion (DOI). | Accuracy of 68% for Support Vector Machine (SVM), 70% Naive Bayes (NB), 81% Boosted Decision Tree (BDT) and 78% Decision Forest (DF) | (+) Effective | Best classification accuracy was achieved with the boosted decision tree algorithm. | Machine algorithms should be considered in medical applications. |
| 12 | Kim et al. [ | 2019 | CNNs | Retrospective study | Deep learning-based survival prediction method in oral squamous cell carcinoma (SCC) | 255 | Survival prediction | Datasets | Random Survival Forest (RSF) and the Cox proportional | c-index of | (+) Effective | This AI model displayed the best performance among the three models | This model can be effective in predicting with higher accuracy and can guide clinicians both in |
| 13 | Anwar Alhazmi et al. [ | 2020 | ANNs | Crosssectional study | To develop (ANN) based model in predicting OC | 73 | Predicting risk of developing OC | Datasets | None | Accuracy of 78.95% | (+) Effective | ANN could perform well in estimating the | More cohort studies are required based on this model |
| 14 | Chui S. Chu et al. [ | 2021 | CNN’s | Cross sectional comparative study | To evaluate the ability of supervised | 467 | Predicting risk of developing OC | Clinicopathological data | linear regression (LR), DT, SVM, and k-nearest | 70.59% accuracy (AUC 0.67), 41.98% sensitivity, and a high specificity | (+) Effective | CNN’s DT model was most successful in identifying “true positive” progressive | AI models in this study have shown promise in predicting |
| 15 | Rosma et al. [ | 2010 | ANNs | Cross sectional comparative study | Performances of the two artificial | 171 | Predicting the likelihood of an individual developing oral cancer | Datasets | 27 oral cancer | Mean accuracy, sensitivity, and specificity of the models were 59.9, 45.5, and 85.3 for fuzzy neural | (+) Effective | Fuzzy regression and fuzzy neural network performed better than oral cancer clinicians | These neural network models provide a suitable alternative to human expert prediction in predicting oral cancer susceptibility. |
| 16 | Omar A. Karadaghy et al. [ | 2019 | CNN’s | Crosssectional study | To develop a prediction DT model using machine learning for 5-year overall survival | 33, 065 | Predicting OSCC | Dataset | None | accuracy was 71%, precision was 71%, | (+) Effective | AI better in predicting OSCC | AI learning may play in individual patient risk estimation in the |
ANNs: Artificial Neural Networks, CNNs: Convolutional Neural Networks, DNNs: Deep Neural Networks, and c-index: concordance index.
Figure 2QUADAS-2 assessment of the individual risk of bias domains.
Figure 3QUADAS-2 assessment of applicability concerns.