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Scientific Section

Self-perceived orthodontic treatment need evaluated through 3 scales in a university population

, &
Pages 329-334 | Received 29 Sep 2003, Accepted 05 Feb 2004, Published online: 16 Dec 2014
 

Abstract

Objective: To evaluate the self-perceived orthodontic treatment need in a university population evaluated through 3 scales that used different approaches.

Design: Cross-sectional survey.

Setting: University dental clinic, Lima, Peru, 2001.

Materials and methods: Questionnaires that gathered perceptions on dentofacial aesthetic perception and orthodontic treatment need were applied to a randomly selected sample (329) of first year university students (729). Subjects undergoing orthodontic treatment at the time of examination were excluded.

Main outcome measures: Aesthetic component (AC) of the Index of Orthodontic Treatment Need (IOTN), Oral Aesthetics Subjective Index Scale (OASIS) and a visual analogue scale (VAS) were used.

Statistical analysis: Descriptive statistics, Spearman correlation test, Kruskall–Wallis test and Mann–Whitney U-test were used.

Results: For the AC, 87.5% were in the ‘without treatment need’ category, 10.6% in the ‘borderline need’ category and 1.8% in the ‘treatment need’ category. The mean AC score was 3.02 (±1.49). The mean OASIS score was 11.81 (±4.84), and the VAS score was 40.16 (±18.16). Correlations between the 3 self-assessment scales were moderate (AC-OASIS 0.416, AC-VAS 0.541 and OASIS-VAS 0.457). Gender or previous orthodontic treatment had no influence (p<0.05) on the scales.

Conclusions: Differences in the approaches used by each scale to evaluate the self-perception of the aesthetical arrangement of the front teeth may explain the moderate correlation values.

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