| Literature DB >> 35493354 |
Fahad R Albogamy1, Junaid Asghar2, Fazli Subhan3,4, Muhammad Zubair Asghar5,6, Mabrook S Al-Rakhami7, Aurangzeb Khan3,8, Haidawati Mohamad Nasir5, Mohd Khairil Rahmat5, Muhammad Mansoor Alam5,9,10,11,12, Adidah Lajis5, Mazliham Mohd Su'ud3.
Abstract
Background and Objective: Viral hepatitis is a major public health concern on a global scale. It predominantly affects the world's least developed countries. The most endemic regions are resource constrained, with a low human development index. Chronic hepatitis can lead to cirrhosis, liver failure, cancer and eventually death. Early diagnosis and treatment of hepatitis infection can help to reduce disease burden and transmission to those at risk of infection or reinfection. Screening is critical for meeting the WHO's 2030 targets. Consequently, automated systems for the reliable prediction of hepatitis illness. When applied to the prediction of hepatitis using imbalanced datasets from testing, machine learning (ML) classifiers and known methodologies for encoding categorical data have demonstrated a wide range of unexpected results. Early research also made use of an artificial neural network to identify features without first gaining a thorough understanding of the sequence data.Entities:
Keywords: bidirectional LSTM; decision support system; deep learning; disease diagnosis; hepatitis diagnostics
Mesh:
Year: 2022 PMID: 35493354 PMCID: PMC9051027 DOI: 10.3389/fpubh.2022.862497
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
A review of selected studies.
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| Chicco and Jurman ( | RF classifier model | The [−1, +1] interval of MCC has increased by 8.25% | The validation cohort dataset lacked some of the attributes of the discovery cohort dataset. |
| Kashif et al. ( | K Nearest Neighbor, kStar, Bayesian Network, Randomized Forest, Radial Basis, PART, Logistic Regression, OneR, Svms, and Multi-Layer Perceptron | Acc: 87% | Lack of data balancing techniques |
| Panigrahi et al. ( | Web-based Expert System Shell | Knowledge base consists of 59 rules to design the expert system | Procedural knowledge can be enhanced for more effective diagnosis |
| Wicaksno and Mudiono ( | certainty factor was used for early diagnosis of hepatitis | CF = 97% | Limited rule base |
| Wu et al. ( | DeepHBV model | AUROC = 0.6363 AUPR = 0.5471 | Lack of appropriate hidden layer selection |
| Butt et al. ( | Intelligent Hepatitis C Stage Diagnosis System | Precision (94%) | Lack of external validation |
| Orooji and Kermani ( | machine learning to handle unbalanced data in hepatitis diagnostics | More than 90% | Skewed dataset |
| Parisi and RaviChandran ( | Merges neighborhood component analysis and ReliefF | F1-score = 94% | Expanding its applicability to additional hematological diseases in order to improve patient outcomes more comprehensively. |
Figure 1A preview of the proposed hepatitis disease prediction system.
Figure 2Hepatitis dataset breakup.
Figure 3BiLSTM is used for the hepatitis prediction system.
Figure 41st hidden layer.
Figure 52nd hidden layer.
Figure 6BiSLTM outcome.
Figure 7Hepatitis patient survivability classification using the softmax function.
Figure 8Patient entry form.
Figure 9Hepatitis prediction data input form.
Figure 10Preprocessing form for Hepatitis prediction.
Figure 11Model training interface.
Figure 12The interface for predicting hepatitis.
Figure 13The accuracy, recall, and f1-score of the BiLSTM deep learning models.
Accuracy, test loss, and training time of the BiLSTM models.
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| BiILSTM-1 | 84% | 0.86 | 20 s |
| BiLSTM-2 | 85% | 0.83 | 7 s |
| BiILSTM-3 | 86% | 1.06 | 18 s |
| BiLSTM-4 | 87% | 1.15 | 16 s |
| BiLSTM-5 | 88% | 0.88 | 7 s |
| BiLSTM-6 | 90% | 0.85 | 15 s |
| BiLSTM-7 | 91% | 1.23 | 12 s |
| BiLSTM-8 | 91% | 0.78 | 14 s |
| BiLSTM-9 | 92% | 0.87 | 17 s |
| BiLSTM-10 | 95% | 0.80 | 12 s |
Figure 14Confusion matrix.
Classifiers based on machine learning vs. suggested model (BiLSTM).
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| SVM | 78 | 79 | 80 | 79 |
| KNN | 77 | 78 | 77 | 78 |
| NB | 74 | 73 | 73 | 73 |
| Proposed (BiLSTM) | 95.08 | 94 | 93 | 93 |
BiLSTM in comparison to other deep learning models.
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| LSTM | 85.14 | 86 | 85 | 85 |
| CNN | 85.24 | 83 | 84 | 83 |
| RNN | 84.15 | 82 | 82 | 82 |
| Proposed (BiLSTM) | 95.08 | 94 | 93 | 93 |
Figure 15Proposed model's performance with and without balancing data.
Figure 16Comparison of other research and the BiLSTM model.
Human expert vs. proposed system prognosis.
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| 1 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 2 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 3 | Hepatitis_patient_ survivability = no | Hepatitis_patient_ survivability = no |
| 4 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = no |
| 5 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 6 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 7 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 8 | Hepatitis_patient_ survivability = no | Hepatitis_patient_ survivability = no |
| 9 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 10 | Hepatitis_patient_ survivability = no | Hepatitis_patient_ survivability = no |
| 11 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |
| 12 | Hepatitis_patient_ survivability = yes | Hepatitis_patient_ survivability = yes |