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Teeth infection and fatigue prediction using optimized neural networks and big data analytic tool

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Abstract

Despite the rapid improvement in dental health over the last few decades, a significant portion of our population continue seek dental care every year. Estimates show that 13% of adults seek dental care for dental infection or fatigue within four years. The Social and individual burden of this disease can be reduced by its early detection. However, the symptoms of teeth infection in the early stages are not clear, hence, it would be relatively difficult to predict teeth infections based solely on human skills and experience. Big Data (BD) technologies have a great potential in transforming dental care, as they have revolutionized other industries. In addition to reducing cost, they could save millions of lives and improve patient outcomes. This paper proposes a novel integrated prediction model that extracts hidden knowledge from radiographic datasets containing a large volume of dental X-ray images and utilizes this knowledge to predict dental infections. Initially, preprocessing techniques using morphological skeleton and mean approach is applied to eliminate noise and enhance the images. Next, Multi Scale Segmented Region (MSR) approach, Watershed Approach (WA), Sobel edge Detection (SD), Histogram based Segmentation (HS), Trainable Segmentation (TS), Dual Clustering (DC), and Fuzzy C-Means clustering (FCM) are examined for image segmentation and feature extraction. Among these methods, MSR was selected for feature extraction since it outperformed other methods in terms of accuracy, specificity, precision, recall and F1-score. Then, a set of neural network classifiers are trained to identify patterns in the extracted optimized features and predict dental infections. For this purpose, we have examined Bacterial Optimized Recurrent Neural Networks (BORNN), Deep Learning Neural Networks (DANN), Genetic Optimized Neural Networks (GONN) and Adaptive Neural Networks Algorithm (ADNN). BORNN have shown maximum accuracy and Roc value (98.1% and 0.92 respectively), and minimum error values (MSE = 0.189, MAE = 0.143). The output of the proposed integrated prediction model is fed into a dental robot who proceeds with the treatment process with high accuracy and minimum delay. The proposed prediction model was implemented using a big data analytics tool called Apache SAMOA and experimental results showed its correctness and effectiveness.

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References

  1. Mohd Nor, H., Harun, N.: Conservative management of dental erosion in adolescents with medical conditions. Case Rep Dent 2018, 1–7 (2018)

    Google Scholar 

  2. https://www.ncbi.nlm.nih.gov/books/NBK542165/

  3. Emami, E., de Souza, R., Kabawat, M., Feine, J.: The impact of edentulism on oral and general health. Int J Dent 2013, 1–7 (2013)

    Article  Google Scholar 

  4. Carter, A., Carter, G., Abbey, R.: A focus group on dental pain complaints with general medical practitioners: developing a treatment algorithm. Int J Family Med 2016, 1–7 (2016)

    Article  Google Scholar 

  5. Hutton, A., Bradwell, M., English, M., Chapple, I.: The oral health needs of children after treatment for a solid tumour or lymphoma. Int. J. Pediatr. Dent. 20(1), 15–23 (2010)

    Article  Google Scholar 

  6. Li, H., Zou, Y., Ding, G.: Dietary factors associated with dental erosion: a meta-analysis. PLoS ONE 7(8), e42626 (2012)

    Article  Google Scholar 

  7. Eam, K., Fejerskov, O.: Prevention of dental caries and the control of disease progression: concepts of preventive, non-operative treatment. In: Dental Caries, pp 167–169. Blackwell Publishing Ltd, Oxford (2003)

  8. Larijani, H., Guggisberg, M.: Improving clinical practice: what dentists need to know about the association between dental fear and a history of sexual violence victimisation. Int J Dent 2015, 1–12 (2015)

    Article  Google Scholar 

  9. Gholami, M., Pakdaman, A., Virtanen, J.: Common perceptions of periodontal health and illness among adults: a qualitative study. ISRN Dent 2012, 1–6 (2012)

    Article  Google Scholar 

  10. Li, G., et al.: A fully actuated robotic assistant for MRI-guided prostate biopsy and brachytherapy. Medical Imaging 2013: Image-Guided Procedures Robotic Interventions, and Modeling, vol. 8671 (2013)

  11. Young, J.: Dental implants using robotics • robotics now. Robotics Now (2019)

  12. Li, J., et al.: A compact dental robotic system using soft bracing technique. IEEE Robot Autom Lett 4(2), 1271–1278 (2019)

    Article  MathSciNet  Google Scholar 

  13. Bilhan, H., Arat, S., Geckili, O.: How precise is dental volumetric tomography in the prediction of bone density? Int. J. Dent. 2012, 1–8 (2012)

    Article  Google Scholar 

  14. Shakeel, P.M., Desa, M.I., Burhanuddin, M.A.: Improved watershed histogram thresholding with probabilistic neural networks for lung cancer diagnosis for CBMIR systems. Multimed. Tools Appl. (2019). https://doi.org/10.1007/s11042-019-7662-9

    Article  Google Scholar 

  15. Cui, T., Wang, Y., Duan, X., Ma, X.: Control Strategy and Experiments for Robot Assisted Craniomaxillofacial Surgery System. Math. Problems Eng. 2019, 1–12 (2019)

    Google Scholar 

  16. https://techjury.net/stats-about/big-data-statistics/#gref

  17. https://www.gartner.com/en/information-technology/glossary/big-data

  18. https://www.idc.com/getdoc.jsp?containerId=prUS44998419

  19. Nanayakkara, S., Zhou, X., Spallek, H.: Impact of big data on oral health outcomes. Oral Dis. 25(5), 1245–1252 (2018)

    Article  Google Scholar 

  20. Finkelstein, J., Zhang, F., Levitin, S.A., Cappelli, D.: Using big data to promote precision oral health in the context of a learning healthcare system. J. Public Health Dent. (2020). https://doi.org/10.1111/jphd.12354

    Article  Google Scholar 

  21. Park, J., Park, W.: History and application of artificial neural networks in dentistry. Eur. J. Dent. 12(4), 594–601 (2018)

    Article  Google Scholar 

  22. Zanella-Calzada, L., et al.: Deep artificial neural networks for the diagnostic of caries using socioeconomic and nutritional features as determinants: data from NHANES 2013–2014. Bioengineering 5(2), 47 (2018)

    Article  Google Scholar 

  23. Vhatkar, S., Dias, J.: Oral-care goods sales forecasting using artificial neural network model. Proc. Comput. Sci. 79, 238–243 (2016)

    Article  Google Scholar 

  24. Al Haidan, A., Abu-Hammad, O., Dar-Odeh, N.: Predicting tooth surface loss using genetic algorithms-optimized artificial neural networks. Comput. Math. Methods Med. 2014, 1–7 (2014)

    Article  Google Scholar 

  25. Patil, S., Kulkarni, V., Bhise, A.: Algorithmic analysis for dental caries detection using an adaptive neural network architecture. Heliyon 5(5), e01579 (2019)

    Article  Google Scholar 

  26. Jiang, J., Zhang, Y., Wei, C., He, T., Liu, Y.: A review on robot in prosthodontics and orthodontics. Adv. Mech. Eng. 7(1), 198748 (2014)

    Article  Google Scholar 

  27. "Vahab - LabArchives, Your Electronic Lab Notebook", Mynotebook.labarchives.com (2019).

  28. Gupta, A., Devi, P., Srivastava, R., Jyoti, B.: Intra oral periapical radiography—basics yet intrigue: a review. Bangladesh J. Dent. Res. Educ. 4(2), 83–87 (2014)

    Article  Google Scholar 

  29. Drage, N.: Cone beam computed tomography (CBCT) in general dental practice. Primary Dent. J. 7(1), 26–30 (2018)

    Google Scholar 

  30. Gomathi, P., Baskar, S., Shakeel, P.M., et al.: Identifying brain abnormalities from electroencephalogram using evolutionary gravitational neocognitron neural network. Multimed Tools Appl. (2019). https://doi.org/10.1007/s11042-019-7301-5

    Article  Google Scholar 

  31. Yang, Y., Qin, X., Wu, B.: Median filter based compressed sensing model with application to MR image reconstruction. Math. Problems Eng. 2018, 1–9 (2018)

    MathSciNet  MATH  Google Scholar 

  32. Shan, C., Huang, B., Li, M.: Binary Morphological Filtering Of Dominant Scattering Area Residues for SAR target recognition. Comput. Intell. Neurosci 2018, 1–15 (2018)

    Article  Google Scholar 

  33. Mubarak, D., Sathik, M., Beevi, S., Revathy, K.: A hybrid region growing algorithm for medical image segmentation. Int. J. Comput. Sci. Inf. Technol. 4(3), 61–70 (2012)

    Google Scholar 

  34. Amandeep-Kaur, A.: Image segmentation using watershed transform. Int. J. Soft Comput. Eng. 4(1), 5–8 (2014)

    Google Scholar 

  35. Singh, S., Saurav, S., Saini, R., Saini, A., Shekhar, C., Vohra, A.: Comprehensive review and comparative analysis of hardware architectures for Sobel edge detector. ISRN Electron. 2014, 1–9 (2014)

    Article  Google Scholar 

  36. Liu, S., Shen, X., Feng, Y., Chen, H.: A novel histogram region merging based multithreshold segmentation algorithm for MR brain images. Int. J. Biomed. Imaging 2017, 1–6 (2017)

    Article  Google Scholar 

  37. Cao, L., Lu, Y., Li, C., Yang, W.: Automatic segmentation of pathological glomerular basement membrane in transmission electron microscopy images with random forest stacks. Comput. Math. Methods Med. 2019, 1–11 (2019)

    Article  MATH  Google Scholar 

  38. Ma, D., Xu, P.: An energy distance aware clustering protocol with dual cluster heads using niching particle swarm optimization for wireless sensor networks. J. Control Sci. Eng. 2015, 1–6 (2015)

    Article  MATH  Google Scholar 

  39. Zhang, J., Shen, L.: An improved fuzzyc-means clustering algorithm based on shadowed sets and PSO. Comput. Intell. Neurosci. 2014, 1–10 (2014)

    Article  Google Scholar 

  40. Zhou, W., Xie, Y.: Interactive medical image segmentation using snake and multiscale curve editing. Comput. Math. Methods Med. 2013, 1–13 (2013)

    Article  MathSciNet  MATH  Google Scholar 

  41. Choi, E., Bahadori, M., Schuetz, A., Stewart, W., Sun, J.: Doctor AI: predicting clinical events via recurrent neural networks. In: Machine Learning for Healthcare Conference, USA (2016).

  42. Abd-Elazim, S., Ali, E.: A hybrid particle swarm optimization and bacterial foraging for power system stability enhancement. Complexity 21(2), 245–255 (2014)

    Article  MathSciNet  Google Scholar 

  43. Tamayo-Quintero, J.D., Gómez-Mendoza, J.B.: Digital dental three dimensional database: a 3D dataset for benchmarking digital dentistry, manual annotations and ground truth.

  44. https://samoa.incubator.apache.org/

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Acknowledgements

“The authors extend their appreciation to the Deanship of Scientific Research at King Saud University for funding this work through research group No. RG-1441-369”

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Correspondence to Mohamed Hashem.

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Hashem, M., Youssef, A.E. Teeth infection and fatigue prediction using optimized neural networks and big data analytic tool. Cluster Comput 23, 1669–1682 (2020). https://doi.org/10.1007/s10586-020-03112-3

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