Kate Sutherland1,2,3, Richard W W Lee3,4, Peter Petocz5, Tat On Chan6, Susanna Ng6, David S Hui6, Peter A Cistulli1,2. 1. Department of Respiratory and Sleep Medicine, Royal North Shore Hospital. 2. Sydney Medical School, University of Sydney. 3. Woolcock Institute of Medical Research, University of Sydney. 4. Department of Respiratory Medicine, Gosford Hospital, Gosford and School of Medicine and Public Health, University of Newcastle, Newcastle, Australia. 5. Department of Statistics, Macquarie University, Sydney, New South Wales, Australia. 6. Division of Respiratory Medicine, Department of Medicine and Therapeutics, The Chinese University of Hong Kong, Hong Kong.
Abstract
BACKGROUND AND OBJECTIVE: Craniofacial morphology is a risk factor for obstructive sleep apnoea (OSA). Facial photography has previously shown utility in predicting OSA in a Caucasian sleep clinic. However, ethnic differences in OSA risk factors may influence these facial predictors. Our aim was to assess phenotypical facial measurements for OSA prediction in a Chinese population. METHODS: Calibrated frontal and profile facial photographs were taken before polysomnography. Photographs were analysed to derive head, face and neck measurements. Demographical, anthropometrical and facial photographical variables were considered in prediction models for OSA. OSA prediction models were derived using logistic regression and classification and regression tree techniques. RESULTS: Two-hundred subjects were recruited (146 OSA, 54 controls). The OSA group contained more men (77% vs 61%) and were more obese. Logistic regression modelling found cervicomental angle (OR 1.06/degree, 95% CI: 1.03-1.09, P < 0.001) and face width (OR 1.7/cm, 95% CI: 1.1-2.7, P = 0.02) predicted OSA (area under the receiver operating characteristics curve 0.76). Classification and regression tree analysis identified cricomental space area, mandibular width, mandibular plane angle and neck soft tissue area as predictors (area under receiver operating characteristics curve 0.81). CONCLUSION: In a Hong Kong Chinese sleep clinic, facial photographical measurements had predictive utility for OSA. Prediction models had similar accuracy and included variables to a previous Caucasian population.
BACKGROUND AND OBJECTIVE: Craniofacial morphology is a risk factor for obstructive sleep apnoea (OSA). Facial photography has previously shown utility in predicting OSA in a Caucasian sleep clinic. However, ethnic differences in OSA risk factors may influence these facial predictors. Our aim was to assess phenotypical facial measurements for OSA prediction in a Chinese population. METHODS: Calibrated frontal and profile facial photographs were taken before polysomnography. Photographs were analysed to derive head, face and neck measurements. Demographical, anthropometrical and facial photographical variables were considered in prediction models for OSA. OSA prediction models were derived using logistic regression and classification and regression tree techniques. RESULTS: Two-hundred subjects were recruited (146 OSA, 54 controls). The OSA group contained more men (77% vs 61%) and were more obese. Logistic regression modelling found cervicomental angle (OR 1.06/degree, 95% CI: 1.03-1.09, P < 0.001) and face width (OR 1.7/cm, 95% CI: 1.1-2.7, P = 0.02) predicted OSA (area under the receiver operating characteristics curve 0.76). Classification and regression tree analysis identified cricomental space area, mandibular width, mandibular plane angle and neck soft tissue area as predictors (area under receiver operating characteristics curve 0.81). CONCLUSION: In a Hong Kong Chinese sleep clinic, facial photographical measurements had predictive utility for OSA. Prediction models had similar accuracy and included variables to a previous Caucasian population.
Authors: Kate Sutherland; Julia L Chapman; Elizabeth A Cayanan; Aimee B Lowth; Keith K H Wong; Brendon J Yee; Ronald R Grunstein; Nathaniel S Marshall; Peter A Cistulli Journal: Sleep Breath Date: 2019-03-29 Impact factor: 2.816
Authors: Kate Sutherland; Andrew S L Chan; Joachim Ngiam; Oyku Dalci; M Ali Darendeliler; Peter A Cistulli Journal: J Clin Sleep Med Date: 2018-11-15 Impact factor: 4.062
Authors: Kate Sutherland; Richard W W Lee; Tat On Chan; Susanna Ng; David S Hui; Peter A Cistulli Journal: J Clin Sleep Med Date: 2018-07-15 Impact factor: 4.062
Authors: Fabiola G Rizzatti; Diego R Mazzotti; Jesse Mindel; Greg Maislin; Brendan T Keenan; Lia Bittencourt; Ning-Hung Chen; Peter A Cistulli; Nigel McArdle; Frances M Pack; Bhajan Singh; Kate Sutherland; Bryndis Benediktsdottir; Ingo Fietze; Thorarinn Gislason; Diane C Lim; Thomas Penzel; Bernd Sanner; Fang Han; Qing Yun Li; Richard Schwab; Sergio Tufik; Allan I Pack; Ulysses J Magalang Journal: Chest Date: 2020-04-15 Impact factor: 10.262
Authors: Daniela Ferreira-Santos; Pedro Amorim; Tiago Silva Martins; Matilde Monteiro-Soares; Pedro Pereira Rodrigues Journal: J Med Internet Res Date: 2022-09-30 Impact factor: 7.076