Literature DB >> 27340975

Cochlear Implant Evaluation: Prognosis Estimation by Data Mining System.

Gloria Guerra-Jiménez1, Ángel Ramos De Miguel, Juan Carlos Falcón González, Silvia Andrea Borkoski Barreiro, Daniel Pérez Plasencia, Ángel Ramos Macías.   

Abstract

OBJECTIVE: Prediction of speech recognition (SR) and quality of life (QoL) outcomes after cochlear implantation is one of the most important challenges for otologists. By sifting through very large amounts of data, data mining reveals trends, patterns, and relationships that might otherwise have remained undetected. There are identifiable pre-implantational factors that condition the cochlear implantation outcome. Our objective is to design a data mining system to predict and classify cochlear implant (CI) predictable benefits in terms of SR and QoL in each patient.
MATERIALS AND METHODS: This is an observational study of CI users for at least one year. Audiological benefits and its relation to QoL are analyzed using the Glasgow Benefit Inventory (GBI) and the Specific Questionnaire (SQ). Sociodemographic and medical variables are processed in SPSS Statistics 19.0, MatLab® and Weka®. Classifiers are designed using the nearest neighbour and decision tree algorithms. Estimators are created by linear logistic regression.
RESULTS: A total of 29 patients (mean age, 55.3 years; 52% female and 48% male) including 48% unilateral CI users and 51% bimodal CI users were included in the study. GBI improved by 36 points and SQ by 1.7 (p<0.05). Using Nearest Neighbour (IB1) algorithm for classifiers, interesting attributes were identified for SR and SQ result classification (success rate: 80.7%). Decision tree algorithm (J48) showed influencing variables for GBI (success rate: 81%). Estimators by linear logistic regression analysis disclosed a precision of 85%, 68%, and 71% for SR, GBI, and SQ, respectively.
CONCLUSION: Our study proposes a systematized system to classify and estimate SR and QoL improvement based on our initial evaluation to complement decision making and patients' information.

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Year:  2016        PMID: 27340975     DOI: 10.5152/iao.2016.510

Source DB:  PubMed          Journal:  J Int Adv Otol        ISSN: 1308-7649            Impact factor:   1.017


  3 in total

1.  Prediction of the Functional Status of the Cochlear Nerve in Individual Cochlear Implant Users Using Machine Learning and Electrophysiological Measures.

Authors:  Jeffrey Skidmore; Lei Xu; Xiuhua Chao; William J Riggs; Angela Pellittieri; Chloe Vaughan; Xia Ning; Ruijie Wang; Jianfen Luo; Shuman He
Journal:  Ear Hear       Date:  2021 Jan/Feb       Impact factor: 3.570

2.  Association of Patient-Related Factors With Adult Cochlear Implant Speech Recognition Outcomes: A Meta-analysis.

Authors:  Elise E Zhao; James R Dornhoffer; Catherine Loftus; Shaun A Nguyen; Ted A Meyer; Judy R Dubno; Theodore R McRackan
Journal:  JAMA Otolaryngol Head Neck Surg       Date:  2020-07-01       Impact factor: 6.223

3.  Predicting and Weighting the Factors Affecting Workers' Hearing Loss Based on Audiometric Data Using C5 Algorithm.

Authors:  Sajad Zare; Mohammad Reza Ghotbi-Ravandi; Hossein ElahiShirvan; Mostafa Ghazizadeh Ahsaee; Mina Rostami
Journal:  Ann Glob Health       Date:  2019-06-18       Impact factor: 2.462

  3 in total

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