| Literature DB >> 36004895 |
Gopi Battineni1, Nalini Chintalapudi1, Mohammad Amran Hossain1, Giuseppe Losco2, Ciro Ruocco1, Getu Gamo Sagaro1, Enea Traini1, Giulio Nittari1, Francesco Amenta1.
Abstract
Background: The progressive aging of populations, primarily in the industrialized western world, is accompanied by the increased incidence of several non-transmittable diseases, including neurodegenerative diseases and adult-onset dementia disorders. To stimulate adequate interventions, including treatment and preventive measures, an early, accurate diagnosis is necessary. Conventional magnetic resonance imaging (MRI) represents a technique quite common for the diagnosis of neurological disorders. Increasing evidence indicates that the association of artificial intelligence (AI) approaches with MRI is particularly useful for improving the diagnostic accuracy of different dementia types.Entities:
Keywords: Alzheimer’s disease; adult-onset dementia; artificial intelligence; machine learning; magnetic resonance imaging; neural networks
Year: 2022 PMID: 36004895 PMCID: PMC9405227 DOI: 10.3390/bioengineering9080370
Source DB: PubMed Journal: Bioengineering (Basel) ISSN: 2306-5354
Search queries for three adopted databases.
| Database | Query |
|---|---|
| PubMed | English AND (“Artificial Intelligence” [Title/Abstract/MeSH] OR “Machine Learning”[Title/Abstract/MeSH]) OR “Deep learning” AND (“diagnosis”[Title/Abstract] OR “detection”[Title/Abstract] OR “identification”[Title/Abstract] OR “recognition”[Title/Abstract]) OR “interpretation”[Title/Abstract]) AND (“dementia”[All Fields] AND “MRI”[All Fields]) AND “PET” [All Fields]) AND “image data”[All Fields]) NOT “classification” [Title/Abstract/MeSH] NOT “ranking”[Title/Abstract/MeSH] NOT “grouping”[Title/Abstract/MeSH] NOT Review[ptyp] NOT books and Documents [ptyp] NOT conference [ptyp] |
| WoS | (“AI” AND “Artificial Intelligence” AND “Machine Learning” AND “Deep Learning”) AND (“Diagnosis” OR “Identification” OR “recognition”) AND (“dementia” OR “Alzheimer’s disease” OR “MRI” OR “PET” OR “medical imaging” OR “neuro”) NOT “segmentation” NOT “functional” NOT “connectivity”) AND LANGUAGE: (English) AND DOCUMENT TYPES: (Review OR Proceedings Paper) |
| Scopus | TITLE-ABS-KEY (“Artificial Intelligence” AND “Machine Learning” AND “Deep Learning”) AND (“Diagnosis” OR “Identification” OR “recognition” OR “interpretation) AND (“neurological diseases” OR “neurogenerative disorders” OR “dementia” OR “MRI” OR “PET”) AND LIMIT-TO (LANGUAGE, “English”) AND (LIMIT-TO (EXACT KEYWORD, “dementia”) |
Figure 1Document distribution of each database.
Figure 2PRISMA 2020 flow chart for new systematic reviews with databases and registry search (*records extracted from only mentioned databases).
Characteristics of papers included in the review.
| N | Country | Study Cohort | Dementia Category | AI Model | AI Modality | Validation Methods | Accuracy | Sensitivity | Specificity | Ref. |
|---|---|---|---|---|---|---|---|---|---|---|
| 1 | Canada | Prospective | AD | RUSRF | PET, MRI | Independent test set | 84% | 70.8% | 86.5% | [ |
| 2 | UK, China | Retrospective | MCI, Dementia | MobileNet, SVM | Facial expressions | 5-fold cross-validation | 73.3% | N/A | N/A | [ |
| 3 | India | Retrospective | AD | DNN, Inception-V1, V2, V3, Residual Networks, DenseNet | MRI | Independent test set | 90.22% | N/A | N/A | [ |
| 4 | India | Retrospective | AD | CNN | MRI | Independent test set | 98.3% | 97% | N/A | [ |
| 5 | India | Retrospective | AD | DTC-HPT | MRI | Independent test set | 99% | 99.10% | N/A | [ |
| 6 | Egypt | Retrospective | AD | CNN | MRI | 10-fold cross-validation | 97% | 95% | N/A | [ |
| 7 | USA | Retrospective | AD | ResNet-50, GBM | MRI | 10-fold cross-validation | 99% | N/A | N/A | [ |
| 8 | USA | Retrospective | AD | MLP | Cognitive data | Independent test set | 92.98% | 93.75% | 92.68% | [ |
| 9 | Canada | Retrospective | AD | CNN | MRI | 5-fold cross-validation | 84% | N/A | N/A | [ |
| 10 | South Korea | Retrospective | MCI, Dementia | ANN | NPT data | 10-fold cross-validation | 96.66% | 96% | 96.8% | [ |
| 11 | USA | Prospective | Dementia | LSTM, CNN | Voice Data | 5-fold cross-validation | 74% | 66.3% | 84.7% | [ |
| 12 | USA | Prospective | PD | CNN | WSI | Cross-validation | 99% | 99% | 99% | [ |
| 13 | USA | Prospective | AD | RNN | MRI | 5-fold cross-validation | 81% | 84% | 80%% | [ |
| 14 | Lithuania | Retrospective | AD | ResNet18, DenseNet201 | MRI | Cross-validation | 98.86% | 98.89% | N/A | [ |
| 15 | Canada | Prospective | PD | ML model | MRI | Independent test set/ | 88% | N/A | N/A | [ |
| 16 | Spain | Retrospective | AD | RF | MRI | Cross-validation | 94.4% | N/A | N/A | [ |
| 17 | Greece | Retrospective | AD and Frontotemporal Dementia | DT, RF, ANN, SVM, Naïve Bayes, and KNN | EEG | 10-fold and leave-one-patient-out cross-validation | 80% (DT)–99.1% (RF) | 94% (NB)–98.6% (RF) | 58% (NB)–99% (RF) | [ |
| 18 | Italy | Retrospective | AD | Gradient boosting, SVM, LR, RF, AdaBoosting, NB | MRI | Cross-validation | 95.96% (NB)–97.58% (GB) | 95%–96% | N/A | [ |
| 19 | UK | Retrospective | Dementia | RF and XGBoost | Clinical data | 5-fold cross-validation | 85% (RF)–87% (XGB) | 73% (RF)–76% (XGB) | 99% (RF) and (XGB) | [ |
| 20 | USA | Retrospective | PD | Classification tree, Gaussian Kernel, LDA, Ensemble, KNN, LR, Naive Bayes, SVM, RF | Clinical data | Leave-one-subject-out cross-validation | 74.1% (SVM)–84.5% (KNN) | 70.6% (SVM)–88.5% (KNN) | 79.2% (SVM)–84.6% (LR) | [ |
| 21 | USA | Retrospective | AD | KNN, SVM, DT, RF, DL | MRI, SNP, clinical data | Internal cross-validation and an external test set | 68% (KNN)–89%(DL) | N/A | N/A | [ |
| 22 | Italy | Retrospective | PD | SVM, KNN, LDA, LR | Clinical data | 10-fold cross-validation | 90.1% (LDA)–91.8% (SVM) | 68.4% (SVM)–87.5% (SVM optimized cost) | N/A | [ |
| 23 | UK | Retrospective | Dementia | NB, LD, SVM, and KNN | MRI | 10-fold cross-validation | 77% (NB)–93% (C-SVM) | 72.5% (CNN)–99% (KNN) | 67% (KNN)–95% (SVM) | [ |
| 24 | Netherlands | Retrospective | Dementia | Linear SVM | MRI, PET | LOO cross-validation and four-fold cross-validation | 89% (voxel)–90% (Region) | 83% (Region)–85% (voxel) | 79% (voxel)–90% (Region) | [ |
| 25 | Finland | Prospective | Dementia | SVM | MRI/CT, | 5-fold cross-validation | 95% | 93% | 99% | [ |
| 26 | Japan | Retrospective | Dementia | XGBoost, RF, LR | Clinical data | - | 86.3% (XGBoost)–89.3% (LR) | 85.7% (XGBoost)–96.4% (LR) | 80.0% (RF)–89.3% (LR) | [ |
| 27 | USA | Retrospective | MCI and AD | SVM | Clinical data | 5-fold cross-validation | 91% | N/A | N/A | [ |
| 28 | USA | Prospective | MCI | SVM | Clinical data | 5-fold cross-validation | 77.17% | 81.97% | 67.74% | [ |
| 29 | Korea | Retrospective | AD and PD | RF | MRI | 5-fold cross-validation | 73.3% | 78.0% | 70.0% | [ |