INSTITUTO DE INVESTIGACION EN CIENCIAS DE LA COMPUTACION
Unidad Ejecutora - UE
Natural speech algorithm applied to baseline interview data can predict which patients will respond to psilocybin for treatment-resistant depression
CARHART-HARRIS, ROBIN L.; FITZGERALD, LILY; SIGMAN, MARIANO; NUTT, DAVID J.; ASHTON, PHILIP; CARRILLO, FACUNDO; STROUD, JACK; FERNÁNDEZ SLEZAK, DIEGO
JOURNAL OF AFFECTIVE DISORDERS
ELSEVIER SCIENCE BV
Año: 2018 vol. 230 p. 84 - 86
AbstractBackgroundNatural speech analytics has seen some improvements over recent years, and this has opened a window for objective and quantitative diagnosis in psychiatry. Here, we used a machine learning algorithm applied to natural speech to ask whether language properties measured before psilocybin for treatment-resistant can predict for which patients it will be effective and for which it will not.MethodsA baseline autobiographical memory interview was conducted and transcribed. Patients with treatment-resistant depression received 2 doses of psilocybin, 10 mg and 25 mg, 7 days apart. Psychological support was provided before, during and after all dosing sessions. Quantitative speech measures were applied to the interview data from 17 patients and 18 untreated age-matched healthy control subjects. A machine learning algorithm was used to classify between controls and patients and predict treatment response.ResultsSpeech analytics and machine learning successfully differentiated depressed patients from healthy controls and identified treatment responders from non-responders with a significant level of 85% of accuracy (75% precision).ConclusionsAutomatic natural language analysis was used to predict effective response to treatment with psilocybin, suggesting that these tools offer a highly cost-effective facility for screening individuals for treatment suitability and sensitivity.LimitationsThe sample size was small and replication is required to strengthen inferences on these results.