| Literature DB >> 36078576 |
Mohamed Zahoor Ul Huqh1, Johari Yap Abdullah2, Ling Shing Wong3, Nafij Bin Jamayet4, Mohammad Khursheed Alam5, Qazi Farah Rashid6, Adam Husein6, Wan Muhamad Amir W Ahmad7, Sumaiya Zabin Eusufzai7, Somasundaram Prasadh8, Vetriselvan Subramaniyan9, Neeraj Kumar Fuloria10, Shivkanya Fuloria10, Mahendran Sekar11, Siddharthan Selvaraj12.
Abstract
OBJECTIVE: The objective of this systematic review was (a) to explore the current clinical applications of AI/ML (Artificial intelligence and Machine learning) techniques in diagnosis and treatment prediction in children with CLP (Cleft lip and palate), (b) to create a qualitative summary of results of the studies retrieved.Entities:
Keywords: artificial intelligence; cleft lip and palate; diagnostic performance; machine learning; treatment prediction
Mesh:
Year: 2022 PMID: 36078576 PMCID: PMC9518587 DOI: 10.3390/ijerph191710860
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 4.614
Search strategy and keywords strings.
| Nos | Keyword Strings | Results Obtained in Scopus (S) | Results Obtained in PubMed (P) | Results Obtained in Web of Science (W) | Articles Screened from Results According to Title (S + P + W) |
|---|---|---|---|---|---|
| 1 | Craniofacial anomaly + Oral clefts * + Artificial intelligence * | 0 | 2 | 0 | 02 |
| 2 | Artificial intelligence * + Cleft lip and palate * + automated landmarks | 01 | 0 | 01 | 02 |
| 3 | Oral cleft * + Machine learning * + prediction | 02 | 0 | 03 | 05 |
| 4 | Neural network * + Deep learning * + Cleft lip and palate * | 03 | 0 | 06 | 09 |
| 5 | Machine learning * + clefts * + sagittal relationship | 01 | 0 | 0 | 01 |
| 6 | Machine learning * + Genetic risk + Oral clefts * | 01 | 01 | 03 | 05 |
| 7 | Artificial intelligence * + anatomical variations + Cleft lip and palate * | 0 | 0 | 0 | 0 |
| 8 | Automatic detection + hypernasal speech + Cleft lip and palate * | 05 | 0 | 06 | 11 |
| 9 | Cleft Lip and Palate * + Surgery + Deep learning * | 02 | 01 | 02 | 05 |
| 10 | Facial morphology + oral clefts * + Machine learning * | 0 | 0 | 0 | 0 |
| 11 | Maxillofacial defect + Machine learning * + orofacial clefts * | 0 | 0 | 0 | 0 |
| 12 | Speech recognition + Artificial intelligence * + Oral clefts * | 0 | 0 | 0 | 0 |
| 13 | Artificial intelligence * + Orthognathic surgery + Prognostics factors | 01 | 0 | 01 | 02 |
| 14 | Artificial intelligence * + Dental characteristics + clefts * | 0 | 0 | 02 | 02 |
| Total | 16 | 04 | 24 | 44 |
String asterisk (*) was used to search all the possible words along with them, S = Articles from Scopus database for each string, P = Articles from PubMed database, W = Articles from Web of Science database for each string.
Sensitivity and Specificity assessment for diagnostic accuracy.
| Test outcome (index test) | Disease status (reference standard result) | |
| True positives (a) | False positives (b) | Test positives (a + b) |
| False negatives (c) | True negatives (d) | Test negatives (c + d) |
| Index test positive (T+) | Index test negative (T−) | |
Figure 1PRISMA flow diagram for studies searched.
Articles excluded and reason for exclusion after reading the full paper.
| Author Name with Year of Publication | Title of the Article | Reason for Exclusion |
|---|---|---|
| Orozco-Arroyave et al. [ | Characterization methods for the detection of multiple voice disorders: Neurological, functional, and laryngeal diseases | The authors did not use any of the AI or machine learning techniques in this study. |
| Dubey et al. [ | Detection and assessment of hypernasality in repaired cleft palate speech using vocal tract and residual features | The authors used different methods for detection and assessment of hypernasality in children with CLP but no AI or machine learning methods involved in the study. |
| Phan et al. [ | Tooth agenesis and orofacial clefting: genetic brothers in arms? | This is a review paper on tooth agenesis and orofacial clefting based on genetic loci but did not mention about any AI models. |
| Mathiyalagan et al. [ | Meta-Analysis of Grainyhead-Like Dependent Transcriptional Networks: A Roadmap for Identifying Novel Conserved Genetic Pathways | The meta-analysis was done to identify the genes causing oral clefting but no AI or Machine learning techniques used in this study |
| Lim et al. [ | Determination of prognostic factors for orthognathic surgery in children with cleft lip and/or palate | Unable to download the full content of this study. |
| Carvajal-Castaño and Orozco-Arroyave, [ | Articulation Analysis in the Speech of Children with Cleft Lip and Palate | This article is a chapter from the book “Progress in Pattern Recognition Image Analysis, Computer Vision and Applications”. |
| Zhang et al. [ | Cleft Volume Estimation and Maxilla Completion Using Cascaded Deep Neural Networks | This paper is a chapter from the book “Machine Learning in Medical Imaging”. |
| Tanikawa et al. [ | Clinical applicability of automated cephalometric landmark identification: Part I—Patient-related identification errors | Unable to download the full text article. |
Characteristics and Methodology of the included studies.
| Author | Target Condition | Sample Size | AI Technique and Method Employed | Findings |
|---|---|---|---|---|
| Machado et al. [ | Genetic risk assessment in non-syndromic CLP | 722 Brazilian subjects with NSCL ± P and 866 without NSCL ± P | RF and multi-layer NN. The genetic risk of NSCL ± P in the Brazilian population was developed by putting 72 known SNPs to RF, which was then used to identify important SNPs. Multiple regression was used to assess the interactions between the SNPs. | 13 SNPs were found to be highly predictive to detect NSCL ± P. The combination of these SNPs was able to split the controls from NSCL ± P with highest accuracy rate of 94.5%. |
| Zhang et al. [ | 504 East asians,103 Han Chinese and 279 Uyghur Chinese with CLP | SVM, LR, NB, DT, RF, k-NN, and ANN. | In the Han population, the LR model produced the greatest results for genetic risk assessment, whereas the SVM produced better results in the Uyghur group. The relative risk score methodology produced the greatest results in the Uyghur population. SNPs in three genes involved in folic acid and vitamin A production were found to play a critical role in the occurrence of NSCL ± P. | |
| Alam et al. [ | Sagittal jaw relationship in cleft and non-cleft individuals | 123 Saudi Arabian patients | AI driven WebCeph software. The LCRs of patients were used to measure 4 different parameters such as SNA, SNB, ANB and Wits appraisal. | The comparison of sagittal development among different types of clefts with NC subjects revealed significant smaller SNA, ANB angles and Wits appraisal. However, there was no significant variation observed in SNB angle between cleft and non-cleft subjects. Also, there was no significant difference found in terms of gender and types of clefts. |
| Alam and Alfawzan [ | Dental characteristics in cleft and non- cleft individuals | 123 Saudi Arabian subjects | AI driven lateral cephalometric analysis was done using WebCeph software. 14 different dental characteristics such as OJ, OB | Significant disparities among cleft and NC subjects were found in relation to Overjet, U1 to FH, U1 to SN, U1 to IMPA, IIA, U1 to NA (degree) and L1 to NB (degree). However, no significant differences were observed between cleft and NC in relation to OB, U1 to UOP, L1 to LOP, COP, U1 to NA (mm), L1 to NB (mm) and UID. AI based cephalometric assessment showed 95.6% accuracy. |
| Wang et al. [ | Detection of Hypernasality in cleft palate patients | 144 Chinese patients (72 with hypernasality and 72 controls) | LSTM-DRNN method which is used for automatic detection of hypernasal speech, vocal cords related feature mining, classification ability and analysis of hypernasality- sensitive vowels. | LSTM-DRNN achieved highest 91.10% accuracy in automatic hypernasal speech detection compared with shallow classifiers. The GD spectrum and PSD have shown 93.35% and 90.26% accuracy, respectively. |
| Golabbakhsh et al. [ | 15 CLP patients and 15 controls (Iranian population) | SVM. Automatic detection of hypernasality with acoustic analysis of Speech. Mel frequency, bionet wavelet transform entropy. | When combined with SVM, Mel frequency and bionet wavelet transform energy 85% of the accuracy have been achieved in identifying hypernasality. | |
| Wang et al. [ | 62 Children and 48 adults (Chinese patients) | CNN. Hypernasality detection. | A hypernasality detection accuracy of 93.34% was achieved with CNN compared with state-of-the-art literature. | |
| Orozco-Arroyave et al. [ | South American children with CLP | SVM. Automatic identification of hypernasal speech of Spanish vowels using classical and non-linear analysis | The NLD analysis provide relevant information and can be used as an alternative classical Mel frequency in automatic detection of hypernasality in Spanish vowels. The greater accuracy of 95.4% was achieved with only NLD features. | |
| Orozco-Arroyave et al. [ | Spanish subjects | A SVM was used to determine whether a voice recording is hypernasal or healthy. | It was found that the combination of NLD features and entropy measurements yield best results. The addition of information provided by the five vowels in the discriminating process results in an improvement in system performance for each vowel. | |
| Mathad et al. [ | 75 cases | A DNN classifier was created to distinguish between nasal and non-nasal speech sounds using a healthy voice corpus. | The proposed DNN method employs forced-alignment, which could lead to incorrect segmentation and impact the hypernasality estimator’s effectiveness. | |
| Li et al. [ | Cleft lip and palate surgery | 2568 CLP cases (Chinese population) | Deep learning technique for CLP surgery. Train the model to locate surgical incisions and markers. State-of-the-art Hour glass architecture and residual learning models were used to create strong baseline dataset. | CLPNet-Light and VGG are significantly better than two CSR-based techniques. The CLPNet-Light is 2.5 times higher than CLPNet which has strong robustness and can be used to train the model to aid in surgical marker localization. |
| Shafi et al. [ | Prediction of | 1000 Pakistani subjects (500 cases and 500 controls) | DNN. A questionnaire was designed to collect information on 36 input characteristics from mothers, half of whom had cleft babies and the other half were controls. Data was gathered and various prediction models were used. The precision of the results obtained with each were assessed. | On test data, the MLP model with three hidden layers and 28 perceptrons in each provided the highest classification accuracy rate of 92.6%. |
The summary results of Risk of bias assessment as per JBI critical appraisal checklist.
| No | Authors | Country | Study Design | Sample Size ( | Quality Assessment (%) | Risk of Bias Rating |
|---|---|---|---|---|---|---|
| 1 | Machado et al. [ | Brazil | Retrospective Case control | 1588 | 90.0 | LOW |
| 2 | Zhang et al. [ | China | Retrospective Case control | 171 | 90.0 | LOW |
| 3 | Alam et al. [ | Saudi Arabia | Retrospective | 123 | 80.0 | LOW |
| 4 | Alam and Alfawzan [ | Saudi Arabia | Retrospective | 123 | 80.0 | LOW |
| 5 | Wang et al. [ | China | Retrospective | 144 | 60.0 | MODERATE |
| 6 | Golabbakhsh et al. [ | Iran | Retrospective | 30 | 80.0 | LOW |
| 7 | Wang et al. [ | China | Retrospective | 110 | 80.0 | LOW |
| 8 | Orozco-Arroyave et al. [ | South America | Retrospective | 238 | 80.0 | LOW |
| 9 | Orozco-Arroyave et al. [ | South America | Retrospective | 202 | 90.0 | LOW |
| 10 | Mathad et al. [ | South America | Retrospective | 326 | 50.0 | HIGH |
| 11 | Li et al. [ | China | Retrospective | 2568 | 50.0 | HIGH |
| 12 | Shafi et al. [ | Pakistan | Prospective | 1000 | 70.0 | LOW |