Fingerprints as Predictors of Schizophrenia: A Deep Learning Study

Author:

Salvador Raymond12ORCID,García-León María Ángeles12,Feria-Raposo Isabel134,Botillo-Martín Carlota5,Martín-Lorenzo Carlos5,Corte-Souto Carmen6,Aguilar-Valero Tania6,Gil-Sanz David78ORCID,Porta-Pelayo David9,Martín-Carrasco Manuel10,del Olmo-Romero Francisco1112,Maria Santiago-Bautista Jose11,Herrero-Muñecas Pilar13,Castillo-Oramas Eglee14,Larrubia-Romero Jesús15,Rios-Alvarado Zoila3,Antonio Larraz-Romeo José16,Guardiola-Ripoll Maria12,Almodóvar-Payá Carmen12,Fatjó-Vilas Mestre Mar1217,Sarró Salvador12,McKenna Peter J12,González-Pablos Emilio,Negro-González Emilio,María Castells Bescos Eva,Felipe Martínez Elena,Muñoz Hermoso Paula,Camaño Serna Cora,Rebolleda Gil Carlos,Feliz Muñoz Carmen,Sevillano De La Fuente Paula,Sánchez Perez Manuel,Arrece Iriondo Izascun,Vicente Jauregui Berecibar José,Domínguez Panchón Ana,Felices de la Fuente Alfredo,Bosque Gabarre Clara,Pomarol-Clotet Edith12,

Affiliation:

1. FIDMAG Germanes Hospitalàries Research Foundation , Barcelona , Spain

2. Centro de Investigación Biomédica en Red de Salud Mental (CIBERSAM), Instituto de Salud Carlos III , Madrid , Spain

3. Benito Menni Complex Assistencial en Salut Mental , Barcelona , Spain

4. Unidad de Investigación en Cuidados y Servicios de Salud, Instituto de Salud Carlos III (Investén-ISCIII) , Madrid , Spain

5. Centro Sociosanitario Hermanas Hospitalarias , Palencia , Spain

6. Hospital Mare de Déu de la Mercè , Barcelona , Spain

7. Centro Hospitalario Padre Menni , Santander , Spain

8. Universidad Europea del Atlántico , Santander , Spain

9. Complejo asistencial Hermanas Hospitalarias , Málaga , Spain

10. Psychiatric Clinic Padre Menni , Pamplona, Navarra , Spain

11. Complejo Asistencial Benito Menni , Ciempozuelos, Madrid , Spain

12. Clínica San Miguel Hermanas Hospitalarias , Madrid , Spain

13. Hospital Sagrat Cor , Martorell, Barcelona , Spain

14. Hospital Aita Menni , Mondragón, País Vasco

15. Centro Neuropsiquiátrico Nuestra Señora del Carmen , Zaragoza , Spain

16. Hermanas Hospitalarias , Provincia de España , Spain

17. Departament de Biologia Evolutiva, Ecologia i Ciències Ambientals, Facultat de Biologia, Universitat de Barcelona , Barcelona , Spain

Abstract

Abstract Background and Hypothesis The existing developmental bond between fingerprint generation and growth of the central nervous system points to a potential use of fingerprints as risk markers in schizophrenia. However, the high complexity of fingerprints geometrical patterns may require flexible algorithms capable of characterizing such complexity. Study Design Based on an initial sample of scanned fingerprints from 612 patients with a diagnosis of non-affective psychosis and 844 healthy subjects, we have built deep learning classification algorithms based on convolutional neural networks. Previously, the general architecture of the network was chosen from exploratory fittings carried out with an independent fingerprint dataset from the National Institute of Standards and Technology. The network architecture was then applied for building classification algorithms (patients vs controls) based on single fingers and multi-input models. Unbiased estimates of classification accuracy were obtained by applying a 5-fold cross-validation scheme. Study Results The highest level of accuracy from networks based on single fingers was achieved by the right thumb network (weighted validation accuracy = 68%), while the highest accuracy from the multi-input models was attained by the model that simultaneously used images from the left thumb, index and middle fingers (weighted validation accuracy = 70%). Conclusion Although fitted models were based on data from patients with a well established diagnosis, since fingerprints remain lifelong stable after birth, our results imply that fingerprints may be applied as early predictors of psychosis. Specially, if they are used in high prevalence subpopulations such as those of individuals at high risk for psychosis.

Publisher

Oxford University Press (OUP)

Subject

Psychiatry and Mental health

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