PURPOSE: To develop classification criteria for 25 of the most common uveitides. DESIGN: Machine learning using 5,766 cases of 25 uveitides. METHODS: Cases were collected in an informatics-designed preliminary database. Using formal consensus techniques, a final database was constructed of 4,046 cases achieving supermajority agreement on the diagnosis. Cases were analyzed within uveitic class and were split into a training set and a validation set. Machine learning used multinomial logistic regression with lasso regularization on the training set to determine a parsimonious set of criteria for each disease and to minimize misclassification rates. The resulting criteria were evaluated in the validation set. Accuracy of the rules developed to express the machine learning criteria was evaluated by a masked observer in a 10% random sample of cases. RESULTS: Overall accuracy estimates by uveitic class in the validation set were as follows: anterior uveitides 96.7% (95% confidence interval [CI] 92.4, 98.6); intermediate uveitides 99.3% (95% CI 96.1, 99.9); posterior uveitides 98.0% (95% CI 94.3, 99.3); panuveitides 94.0% (95% CI 89.0, 96.8); and infectious posterior uveitides / panuveitides 93.3% (95% CI 89.1, 96.3). Accuracies of the masked evaluation of the "rules" were anterior uveitides 96.5% (95% CI 91.4, 98.6) intermediate uveitides 98.4% (91.5, 99.7), posterior uveitides 99.2% (95% CI 95.4, 99.9), panuveitides 98.9% (95% CI 94.3, 99.8), and infectious posterior uveitides / panuveitides 98.8% (95% CI 93.4, 99.9). CONCLUSIONS: The classification criteria for these 25 uveitides had high overall accuracy (ie, low misclassification rates) and seemed to perform well enough for use in clinical and translational research.
PURPOSE: To develop classification criteria for 25 of the most common uveitides. DESIGN: Machine learning using 5,766 cases of 25 uveitides. METHODS: Cases were collected in an informatics-designed preliminary database. Using formal consensus techniques, a final database was constructed of 4,046 cases achieving supermajority agreement on the diagnosis. Cases were analyzed within uveitic class and were split into a training set and a validation set. Machine learning used multinomial logistic regression with lasso regularization on the training set to determine a parsimonious set of criteria for each disease and to minimize misclassification rates. The resulting criteria were evaluated in the validation set. Accuracy of the rules developed to express the machine learning criteria was evaluated by a masked observer in a 10% random sample of cases. RESULTS: Overall accuracy estimates by uveitic class in the validation set were as follows: anterior uveitides 96.7% (95% confidence interval [CI] 92.4, 98.6); intermediate uveitides 99.3% (95% CI 96.1, 99.9); posterior uveitides 98.0% (95% CI 94.3, 99.3); panuveitides 94.0% (95% CI 89.0, 96.8); and infectious posterior uveitides / panuveitides 93.3% (95% CI 89.1, 96.3). Accuracies of the masked evaluation of the "rules" were anterior uveitides 96.5% (95% CI 91.4, 98.6) intermediate uveitides 98.4% (91.5, 99.7), posterior uveitides 99.2% (95% CI 95.4, 99.9), panuveitides 98.9% (95% CI 94.3, 99.8), and infectious posterior uveitides / panuveitides 98.8% (95% CI 93.4, 99.9). CONCLUSIONS: The classification criteria for these 25 uveitides had high overall accuracy (ie, low misclassification rates) and seemed to perform well enough for use in clinical and translational research.
Authors: Ben Van Calster; Yvonne Vergouwe; Caspar W N Looman; Vanya Van Belle; Dirk Timmerman; Ewout W Steyerberg Journal: Eur J Epidemiol Date: 2012-10-07 Impact factor: 8.082
Authors: Michelle Petri; Ana-Maria Orbai; Graciela S Alarcón; Caroline Gordon; Joan T Merrill; Paul R Fortin; Ian N Bruce; David Isenberg; Daniel J Wallace; Ola Nived; Gunnar Sturfelt; Rosalind Ramsey-Goldman; Sang-Cheol Bae; John G Hanly; Jorge Sánchez-Guerrero; Ann Clarke; Cynthia Aranow; Susan Manzi; Murray Urowitz; Dafna Gladman; Kenneth Kalunian; Melissa Costner; Victoria P Werth; Asad Zoma; Sasha Bernatsky; Guillermo Ruiz-Irastorza; Munther A Khamashta; Soren Jacobsen; Jill P Buyon; Peter Maddison; Mary Anne Dooley; Ronald F van Vollenhoven; Ellen Ginzler; Thomas Stoll; Christine Peschken; Joseph L Jorizzo; Jeffrey P Callen; S Sam Lim; Barri J Fessler; Murat Inanc; Diane L Kamen; Anisur Rahman; Kristjan Steinsson; Andrew G Franks; Lisa Sigler; Suhail Hameed; Hong Fang; Ngoc Pham; Robin Brey; Michael H Weisman; Gerald McGwin; Laurence S Magder Journal: Arthritis Rheum Date: 2012-08
Authors: Rohit Aggarwal; Sarah Ringold; Dinesh Khanna; Tuhina Neogi; Sindhu R Johnson; Amy Miller; Hermine I Brunner; Rikke Ogawa; David Felson; Alexis Ogdie; Daniel Aletaha; Brian M Feldman Journal: Arthritis Care Res (Hoboken) Date: 2015-07 Impact factor: 4.794
Authors: E M Tan; A S Cohen; J F Fries; A T Masi; D J McShane; N F Rothfield; J G Schaller; N Talal; R J Winchester Journal: Arthritis Rheum Date: 1982-11
Authors: Martin Aringer; Karen Costenbader; David Daikh; Ralph Brinks; Marta Mosca; Rosalind Ramsey-Goldman; Josef S Smolen; David Wofsy; Dimitrios T Boumpas; Diane L Kamen; David Jayne; Ricard Cervera; Nathalie Costedoat-Chalumeau; Betty Diamond; Dafna D Gladman; Bevra Hahn; Falk Hiepe; Søren Jacobsen; Dinesh Khanna; Kirsten Lerstrøm; Elena Massarotti; Joseph McCune; Guillermo Ruiz-Irastorza; Jorge Sanchez-Guerrero; Matthias Schneider; Murray Urowitz; George Bertsias; Bimba F Hoyer; Nicolai Leuchten; Chiara Tani; Sara K Tedeschi; Zahi Touma; Gabriela Schmajuk; Branimir Anic; Florence Assan; Tak Mao Chan; Ann Elaine Clarke; Mary K Crow; László Czirják; Andrea Doria; Winfried Graninger; Bernadett Halda-Kiss; Sarfaraz Hasni; Peter M Izmirly; Michelle Jung; Gábor Kumánovics; Xavier Mariette; Ivan Padjen; José M Pego-Reigosa; Juanita Romero-Diaz; Íñigo Rúa-Figueroa Fernández; Raphaèle Seror; Georg H Stummvoll; Yoshiya Tanaka; Maria G Tektonidou; Carlos Vasconcelos; Edward M Vital; Daniel J Wallace; Sule Yavuz; Pier Luigi Meroni; Marvin J Fritzler; Ray Naden; Thomas Dörner; Sindhu R Johnson Journal: Arthritis Rheumatol Date: 2019-08-06 Impact factor: 15.483
Authors: Luca Cantarini; Claudia Fabiani; Francesca Della Casa; Antonio Vitale; Silvana Guerriero; Jurgen Sota; Rolando Cimaz; Gaafar Ragab; Piero Ruscitti; Rosa Maria R Pereira; Francesca Minoia; Emanuela Del Giudice; Giacomo Emmi; Claudia Lomater; Sara Monti; Claudia Canofari; Carla Gaggiano; Giovanni Alessio; Elisabetta Miserocchi; Alessandro Conforti; Marilia A Dagostin; Chiara Mapelli; Maria Pia Paroli; Veronica Parretti; Valeria Albano; Rosa Favale; Luca Marelli; Mohamed Tharwat Hegazy; Paola Cipriani; Isabele P B Antonelli; Valeria Caggiano; Emma Aragona; Ahmed Hatem Laymouna; Gian Marco Tosi; Maria Tarsia; Marco Cattalini; Francesco La Torre; Giuseppe Lopalco; Ewa Więsik-Szewczyk; Micol Frassi; Stefano Gentileschi; Heitor F Giordano; Bruno Frediani; Samuel K Shinjo; Donato Rigante; Petros P Sfikakis; Alberto Balistreri; Mohamed A Hussein; Rana Hussein Amin Journal: Ophthalmol Ther Date: 2022-01-31
Authors: Maximilian W M Wintergerst; Nicholas R Merten; Moritz Berger; Chantal Dysli; Jan H Terheyden; Enea Poletti; Frank G Holz; Valentin S Schäfer; Matthias Schmid; Thomas Ach; Robert P Finger Journal: Sci Rep Date: 2022-08-29 Impact factor: 4.996
Authors: Claudia Fabiani; Luca Cantarini; Antonio Vitale; Francesca Della Casa; Gaafar Ragab; Ibrahim A Almaghlouth; Giuseppe Lopalco; Rosa Maria Pereira; Silvana Guerriero; Marcello Govoni; Petros P Sfikakis; Roberto Giacomelli; Francesco Ciccia; Sara Monti; Piero Ruscitti; Matteo Piga; Claudia Lomater; Abdurrahman Tufan; Daniela Opris-Belinski; Giacomo Emmi; José Hernández-Rodríguez; Ali Şahin; Gian Domenico Sebastiani; Elena Bartoloni; Nurullah Akkoç; Özgül Soysal Gündüz; Marco Cattalini; Giovanni Conti; Gulen Hatemi; Armin Maier; Paola Parronchi; Emanuela Del Giudice; Sukran Erten; Antonella Insalaco; Francesca Li Gobbi; Maria Cristina Maggio; Farhad Shahram; Valeria Caggiano; Mohamed Tharwat Hegazy; Kazi Nur Asfina; Maria Morrone; Leandro L Prado; Rosanna Dammacco; Francesca Ruffilli; Aikaterini Arida; Luca Navarini; Ilenia Pantano; Lorenzo Cavagna; Alessandro Conforti; Alberto Cauli; Elena Maria Marucco; Hamit Kucuk; Ruxandra Ionescu; Irene Mattioli; Gerard Espinosa; Olga Araújo; Burak Karkaş; Claudia Canofari; Jurgen Sota; Ahmed Hatem Laymouna; Asma A Bedaiwi; Sergio Colella; Henrique Ayres M Giardini; Valeria Albano; Andrea Lo Monaco; George E Fragoulis; Riza Can Kardas; Virginia Berlengiero; Mohamed A Hussein; Francesca Ricci; Francesco La Torre; Donato Rigante; Ewa Więsik-Szewczyk; Micol Frassi; Stefano Gentileschi; Gian Marco Tosi; Marilia Ambiel Dagostin; Ayman Abdel-Monem Ahmed Mahmoud; Maria Tarsia; Giovanni Alessio; Rolando Cimaz; Teresa Giani; Carla Gaggiano; Florenzo Iannone; Paola Cipriani; Mariam Mourabi; Veronica Spedicato; Sara Barneschi; Emma Aragona; Alberto Balistreri; Bruno Frediani Journal: Intern Emerg Med Date: 2022-07-14 Impact factor: 5.472