OBJECTIVE: To assess the relative ability of principal components analysis (PCA)-derived dietary patterns to correctly identify cases and controls compared with other methods of characterising food intake. SUBJECTS: Participants in this study were 232 endometrial cancer cases and 639 controls from the Western New York Diet Study, 1986-1991, frequency-matched to cases on age and county of residence. DESIGN: Usual intake in the year preceding interview of 190 foods and beverages was collected during a personal interview using a detailed food-frequency questionnaire. Principal components analysis identified two major dietary patterns which we labelled 'healthy' and 'high fat'. Classification on disease status was assessed with separate discriminant analyses (DAs) for four different characterisation schemes: stepwise DA of 168 food items to identify the subset of foods that best discriminated between cases and controls; foods associated with each PCA-derived dietary pattern; fruits and vegetables (47 items); and stepwise DA of USDA-defined food groups (fresh fruit, canned/frozen fruit, raw vegetables, cooked vegetables, red meat, poultry, fish and seafood, processed meats, snacks and sweets, grain products, dairy, and fats). RESULTS: In general, classification of disease status was somewhat better among cases (54.7% to 67.7%) than controls (54.0% to 63.1%). Correct classification was highest for fruits and vegetables (67.7% and 62.9%, respectively) but comparable to that of the other schemes (49.5% to 66.8%). CONCLUSIONS: Our results suggest that the use of principal components analysis to characterise dietary behaviour may not provide substantial advantages over more commonly used, less sophisticated methods of characterising diet.
OBJECTIVE: To assess the relative ability of principal components analysis (PCA)-derived dietary patterns to correctly identify cases and controls compared with other methods of characterising food intake. SUBJECTS:Participants in this study were 232 endometrial cancer cases and 639 controls from the Western New York Diet Study, 1986-1991, frequency-matched to cases on age and county of residence. DESIGN: Usual intake in the year preceding interview of 190 foods and beverages was collected during a personal interview using a detailed food-frequency questionnaire. Principal components analysis identified two major dietary patterns which we labelled 'healthy' and 'high fat'. Classification on disease status was assessed with separate discriminant analyses (DAs) for four different characterisation schemes: stepwise DA of 168 food items to identify the subset of foods that best discriminated between cases and controls; foods associated with each PCA-derived dietary pattern; fruits and vegetables (47 items); and stepwise DA of USDA-defined food groups (fresh fruit, canned/frozen fruit, raw vegetables, cooked vegetables, red meat, poultry, fish and seafood, processed meats, snacks and sweets, grain products, dairy, and fats). RESULTS: In general, classification of disease status was somewhat better among cases (54.7% to 67.7%) than controls (54.0% to 63.1%). Correct classification was highest for fruits and vegetables (67.7% and 62.9%, respectively) but comparable to that of the other schemes (49.5% to 66.8%). CONCLUSIONS: Our results suggest that the use of principal components analysis to characterise dietary behaviour may not provide substantial advantages over more commonly used, less sophisticated methods of characterising diet.
Authors: Linda Van Horn; Lu Tian; Marian L Neuhouser; Barbara V Howard; Charles B Eaton; Linda Snetselaar; Nirupa R Matthan; Alice H Lichtenstein Journal: J Nutr Date: 2011-12-21 Impact factor: 4.798
Authors: Aurelie Moskal; Pedro T Pisa; Pietro Ferrari; Graham Byrnes; Heinz Freisling; Marie-Christine Boutron-Ruault; Claire Cadeau; Laura Nailler; Andrea Wendt; Tilman Kühn; Heiner Boeing; Brian Buijsse; Anne Tjønneland; Jytte Halkjær; Christina C Dahm; Stephanie E Chiuve; Jose R Quirós; Genevieve Buckland; Esther Molina-Montes; Pilar Amiano; José M Huerta Castaño; Aurelio Barricarte Gurrea; Kay-Tee Khaw; Marleen A Lentjes; Timothy J Key; Dora Romaguera; Anne-Claire Vergnaud; Antonia Trichopoulou; Christina Bamia; Philippos Orfanos; Domenico Palli; Valeria Pala; Rosario Tumino; Carlotta Sacerdote; Maria Santucci de Magistris; H Bas Bueno-de-Mesquita; Marga C Ocké; Joline W J Beulens; Ulrika Ericson; Isabel Drake; Lena M Nilsson; Anna Winkvist; Elisabete Weiderpass; Anette Hjartåker; Elio Riboli; Nadia Slimani Journal: PLoS One Date: 2014-06-05 Impact factor: 3.240
Authors: Aurélie Moskal; Heinz Freisling; Graham Byrnes; Nada Assi; Michael T Fahey; Mazda Jenab; Pietro Ferrari; Anne Tjønneland; Kristina En Petersen; Christina C Dahm; Camilla Plambeck Hansen; Aurélie Affret; Marie-Christine Boutron-Ruault; Claire Cadeau; Tilman Kühn; Verena Katzke; Khalid Iqbal; Heiner Boeing; Antonia Trichopoulou; Christina Bamia; Androniki Naska; Giovanna Masala; Maria Santucci de Magistris; Sabina Sieri; Rosario Tumino; Carlotta Sacerdote; Petra H Peeters; Bas H Bueno-de-Mesquita; Dagrun Engeset; Idlir Licaj; Guri Skeie; Eva Ardanaz; Genevieve Buckland; José M Huerta Castaño; José R Quirós; Pilar Amiano; Elena Molina-Portillo; Anna Winkvist; Robin Myte; Ulrika Ericson; Emily Sonestedt; Aurora Perez-Cornago; Nick Wareham; Kay-Tee Khaw; Inge Huybrechts; Konstantinos K Tsilidis; Heather Ward; Marc J Gunter; Nadia Slimani Journal: Br J Cancer Date: 2016-10-20 Impact factor: 7.640