Vocal acoustic analysis and machine learning for the identification of schizophrenia

被引:0
作者
Espinola C.W. [1 ,2 ]
Gomes J.C. [3 ]
Pereira J.M.S. [3 ]
dos Santos W.P. [1 ]
机构
[1] Departamento de Engenharia Biomédica, Universidade Federal de Pernambuco, Recife
[2] Serviço de Emergências Psiquiátricas, Hospital Ulysses Pernambucano, Recife
[3] Núcleo de Engenharia da Computação, Escola Politécnica da Universidade de Pernambuco, Recife
关键词
Acoustic parameters; Diagnosis; Machine learning; Schizophrenia; Support vector machines; Voice;
D O I
10.1007/s42600-020-00097-1
中图分类号
学科分类号
摘要
Purpose: Psychiatry still needs objective biomarkers. In the context of schizophrenia, there are speech abnormalities such as tangentiality, derailment, alogia, neologisms, poverty of speech, and aprosodia. There is a growing interest in speech signals features as possible indicators of schizophrenia. This article aims to develop an intelligent tool for detection of schizophrenia using vocal patterns and machine learning techniques. The main advantages of this type of solution are the low cost, high performance, and for being non-invasive. Methods: Thirty-one individuals over 18 years old were selected, 20 with previous diagnosis of schizophrenia, and 11 healthy controls. Their speech was audio-recorded in naturalistic settings, during a routine medical assessment for psychiatric patients. In the case of healthy patients, the recordings were made in different environments. Recordings were pre-processed, excluding non-participant voices. We extracted 33 features. We used the particle swarm optimization algorithm for feature selection. Results: The classifiers’ performance was analyzed with four metrics: accuracy, sensibility, specificity, and kappa index. Best results were achieved when considering all 33 extracted features. Within machine models, support vector machines (SVM) models provided the greatest classification performance, with mean accuracy of 91.76% for PUK kernel. Our results outperform those from most studies published so far for the detection of schizophrenia based on acoustic patterns. Conclusion: The use of machine learning classifiers using vocal parameters, in particular SVM, has shown to be very promising for the detection of schizophrenia. Nevertheless, further experiments with a larger sample will be necessary to validate our findings. © 2020, Sociedade Brasileira de Engenharia Biomedica.
引用
收藏
页码:33 / 46
页数:13
相关论文
共 54 条
[11]  
Chuanwen J., Bompard E., A hybrid method of chaotic particle swarm optimization and linear interior for reactive power optimisation, Math Comput Simul, 68, 1, pp. 57-65, (2005)
[12]  
Cohen A.S., Alpert M., Nienow T.M., Dinzeo T.J., Docherty N.M., Computerized measurement of negative symptoms in schizophrenia, J Psychiatr Res, 42, pp. 827-836, (2008)
[13]  
Cohen A.S., Mitchell K.R., Docherty N.M., Horan W.P., Vocal expression in schizophrenia: Less than meets the ear, J Abnorm Psychol, 125, 2, pp. 299-309, (2016)
[14]  
Cohen A.S., Najolia G.M., Kim Y., Dinzeo T.J., On the boundaries of blunt affect/alogia across severe mental illness: Implications for research domain criteria, Schizophr Res, 140, 1-3, pp. 41-45, (2012)
[15]  
Commowick O., Istace A., Kain M., Laurent B., Leray F., Simon M., Et al., Objective evaluation of multiple sclerosis lesion segmentation using a data management and processing infrastructure, Sci Rep, 8, 1, pp. 1-17, (2018)
[16]  
Compton M.T., Lunden A., Cleary S.D., Pauselli L., Alolayan Y., Halpern B., Et al., The aprosody of schizophrenia: Computationally derived acoustic phonetic underpinnings of monotone speech, Schizophrenia Research, pp. 1-8, (2018)
[17]  
Covington M.A., Lunden S.L.A., Cristofaro S.L., Wan C.R., Bailey C.T., Broussard B., Et al., Phonetic measures of reduced tongue movement correlate with negative symptom severity in hospitalized patients with first-episode schizophrenia-spectrum disorders, Schizophr Res, 142, pp. 93-95, (2012)
[18]  
Cruz T., Cruz T., Santos W., Detection and classification of lesions in mammographies using neural networks and morphological wavelets, IEEE Lat am Trans, 16, 3, pp. 926-932, (2018)
[19]  
de Lima S.M., da Silva-Filho A.G., dos Santos W.P., Detection and classification of masses in mammographic images in a multi-kernel approach, Comput Methods Prog Biomed, 134, pp. 11-29, (2016)
[20]  
de Santana M.A., Pereira J.M.S., da Silva F.L., de Lima N.M., de Sousa F.N., de Arruda G.M.S., Et al., Breast cancer diagnosis based on mammary thermography and extreme learning machines, Res Biomed Eng, 34, 1, pp. 45-53, (2018)