AI Article Synopsis

  • The study analyzed the occurrence of Schneiderian First Rank Symptoms in first-time admission schizophrenic patients across five different subcultural groups.
  • The findings indicated that these symptoms were most common among UK immigrant patients and least common among Greek immigrant patients.
  • Additionally, symptoms were more frequently observed in patients who were recently admitted, voluntarily admitted, and those who had some proficiency in English.

Article Abstract

Differences in the presence of Schneiderian First Rank Symptoms in first admission schizophrenic patients were examined in five subcultural groupings treated in the same facilities. Examination of the case notes of 212 patients revealed that first rank symptoms were most prevalent in the UK immigrant group and least frequently present in the Greek immigrant group. First rank symptoms were more prevalent in patients admitted recently, admitted voluntarily, and amongst those who had at least some command of English.

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http://dx.doi.org/10.1080/00048679309075770DOI Listing

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