Benefits of fuzzy logic in the assessment of intellectual disability

Among the artificial intelligence techniques that successfully support computer assisted decision making, fuzzy logic has proved to be a powerful tool in various fields. In particular it is appreciated by clinical practitioners because of their approaches to take a decision require to deal with uncertainties and vagueness in the knowledge and information. One field in which fuzzy sets theory can be applied with great benefit is psychopathology due to the high prominence of sources of uncertainty, that should be taken into account when the diagnosis of intellectual disability must be formulated. Therefore clinical psychologists have often to deal with comorbidities that make the decision process harder because they must evaluate different assessment tools for a correct diagnosis. In our work we investigate the application of computational intelligence methods, and in particular of approaches based on fuzzy logic and its hybridizations, in the psychological assessment by means of theoretical studies and practical experiments with data collected from patients affected by different levels of intellectual disability. In this paper we present a detailed review of the experimental application, with patients under treatment in a clinical centre, of methodologies we propose to generate fuzzy expert systems for the assessment of intellectual disability. Specifically we highlight, with numerical results, how they can be beneficial for the diagnosis and improve efficacy of the administration of psycho-diagnostic instruments and the efficiency of the assessment.

[1]  Yutaka Hata,et al.  Transcranial ultrasonography system for visualizing skull and brain surface aided by fuzzy expert system , 2005, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).

[2]  Simon Haykin,et al.  Neural Networks: A Comprehensive Foundation , 1998 .

[3]  Vincenzo Catania,et al.  Genetic Tuning of Fuzzy Rule Deep Structures for Efficient Knowledge Extraction from Medical Data , 2006, 2006 IEEE International Conference on Systems, Man and Cybernetics.

[4]  Stephen L. Chiu,et al.  Fuzzy Model Identification Based on Cluster Estimation , 1994, J. Intell. Fuzzy Syst..

[5]  Robert Ivor John,et al.  Computer aided fuzzy medical diagnosis , 2004, Inf. Sci..

[6]  Jyh-Shing Roger Jang,et al.  ANFIS: adaptive-network-based fuzzy inference system , 1993, IEEE Trans. Syst. Man Cybern..

[7]  Domenic V. Cicchetti,et al.  The Vineland Adaptive Behavior Scales. , 1989 .

[8]  Michio Sugeno,et al.  Fuzzy identification of systems and its applications to modeling and control , 1985, IEEE Transactions on Systems, Man, and Cybernetics.

[9]  J. Raven Guide to using the Coloured Progressive Matrices. , 1958 .

[10]  Phyllis Tempest,et al.  Local Navajo Norms for the Wechsler Intelligence Scale for Children: Third Edition. , 1998 .

[11]  Hiroaki Kazui,et al.  [Wechsler Adult Intelligence Scale-III (WAIS-III)]. , 2011, Nihon rinsho. Japanese journal of clinical medicine.

[12]  Uzay Kaymak,et al.  Fuzzy Decision Making in Modeling and Control , 2002, World Scientific Series in Robotics and Intelligent Systems.

[13]  Serafino Buono,et al.  Diagnosis of Intellectual Disability: comparison between clinical criteria and automatized procedures , 2009 .

[14]  C. Spearman General intelligence Objectively Determined and Measured , 1904 .

[15]  Yutaka Hata,et al.  Newborn Brain MR Image Segmentation Using Deformable Surface Model Based on Fuzzy Knowledge Models , 2013 .

[16]  Gerardo Beni,et al.  A Validity Measure for Fuzzy Clustering , 1991, IEEE Trans. Pattern Anal. Mach. Intell..

[17]  Christophe Marsala,et al.  Gradual fuzzy decision trees to help medical diagnosis , 2012, 2012 IEEE International Conference on Fuzzy Systems.

[18]  Vincenzo Catania,et al.  Psychology with soft computing: An integrated approach and its applications , 2008, Appl. Soft Comput..

[19]  James M. Keller,et al.  Fuzzy Models and Algorithms for Pattern Recognition and Image Processing , 1999 .

[20]  Festus Oluseyi Oderanti,et al.  Dynamics of business games with management of fuzzy rules for decision making , 2010 .

[21]  Alessandro G. Di Nuovo,et al.  Intelligent quotient estimation of mental retarded people from different psychometric instruments using artificial neural networks , 2012, Artif. Intell. Medicine.

[22]  Alessandro G. Di Nuovo,et al.  A fuzzy system index to preserve interpretability in deep tuning of fuzzy rule based classifiers , 2013, J. Intell. Fuzzy Syst..

[23]  Alessandro G. Di Nuovo,et al.  Missing data analysis with fuzzy C-Means: A study of its application in a psychological scenario , 2011, Expert Syst. Appl..

[24]  James C. Bezdek,et al.  Fuzzy c-means clustering of incomplete data , 2001, IEEE Trans. Syst. Man Cybern. Part B.

[25]  Ke Zeng,et al.  A comparative study on sufficient conditions for Takagi-Sugeno fuzzy systems as universal approximators , 2000, IEEE Trans. Fuzzy Syst..

[26]  Cathy M. Helgason,et al.  A structural representation of anticipatory thought process using the example of clinical medicine and the physician , 2013, 2013 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE).

[27]  Vincenzo Catania,et al.  Fuzzy decision making in embedded system design , 2006, Proceedings of the 4th International Conference on Hardware/Software Codesign and System Synthesis (CODES+ISSS '06).

[28]  K. Murphy,et al.  Statistical Power Analysis: A Simple and General Model for Traditional and Modern Hypothesis Tests, Second Ediction , 1998 .