Objective: To develop and validate the prognostic prediction model DU-VASC to assist the clinicians in decision-making regarding the use of platelet inhibitors (PIs) for the management of digital ulcers in patients with systemic sclerosis. Secondly, to assess the incremental value of PIs as predictor. Methods: We analysed patient data from the European Scleroderma Trials and Research group registry (one time point assessed). Three sets of derivation/validation cohorts were obtained from the original cohort. Using logistic regression, we developed a model for prediction of digital ulcers (DUs). C-Statistics and calibration plots were calculated to evaluate the prediction performance. Variable importance plots and the decrease in C-statistics were used to address the importance of the predictors. Results: Of 3710 patients in the original cohort, 487 had DUs and 90 were exposed to PIs. For the DU-VASC model, which includes 27 predictors, we observed good calibration and discrimination in all cohorts (C-statistic = 81.1% [95% CI: 78.9%, 83.4%] for the derivation and 82.3% [95% CI: 779.3%, 85.3%] for the independent temporal validation cohort). Exposure to PIs was associated with absence of DUs and was the most important therapeutic predictor. Further important factors associated with absence of DUs were lower modified Rodnan skin score, anti-Scl-70 negativity and normal CRP. Conversely, the exposure to phosphodiesterase-5 inhibitor, prostacyclin analogues or endothelin receptor antagonists seemed to be associated with the occurrence of DUs. Nonetheless, previous DUs remains the most impactful predictor of DUs. Conclusion: The DU-VASC model, with good calibration and discrimination ability, revealed that PI treatment was the most important therapy-related predictor associated with reduced DU occurrence.

Use of platelet inhibitors for digital ulcers related to systemic sclerosis: EUSTAR study on derivation and validation of the DU-VASC model / Garaiman, Alexandru; Steigmiller, Klaus; Gebhard, Catherine; Mihai, Carina; Dobrota, Rucsandra; Bruni, Cosimo; Matucci-Cerinic, Marco; Henes, Joerg; de Vries-Bouwstra, Jeska; Smith, Vanessa; Doria, Andrea; Allanore, Yannick; Dagna, Lorenzo; Anić, Branimir; Montecucco, Carlomaurizio; Kowal-Bielecka, Otylia; Martin, Mickael; Tanaka, Yoshiya; Hoffmann-Vold, Anna-Maria; Held, Ulrike; Distler, Oliver; Becker, Mike Oliver; Randone, Silvia Bellando; Lepri, Gemma; Walker, Ulrich; Iannone, Florenzo; Jordan, Suzana; Becvar, Radim; Gindzienska-Sieskiewicz, Ewa; Karaszewska, Katarzyna; Cutolo, Maurizio; Cuomo, Giovanna; Siegert, Elise; Rednic, Simona; Avouac, Jérome; Desbas, Carole; Caporali, Roberto; Cavagna, Lorenzo; Carreira, Patricia E; Novak, Srdan; Czirják, László; Iudici, Michele; Kucharz, Eugene J; Zanatta, Elisabetta; Coleiro, Bernard; Moroncini, Gianluca; Bancel, Dominique Farge; Airò, Paolo; Hesselstrand, Roger; Radic, Mislav; Balbir-Gurman, Alexandra; Hunzelmann, Nicolas; Pellerito, Raffaele; Giollo, Alessandro; Morovic-Vergles, Jadranka; Denton, Christopher; Damjanov, Nemanja; Pecher, Ann-Christian; Santamaria, Vera Ortiz; Heitmann, Stefan; Krasowska, Dorota; Hasler, Paul; Foeldvari, Ivan; Salvador, Maria João; Stamenkovic, Bojana; Selmi, Carlo Francesco; Ananieva, Lidia P; Herrick, Ariane; Müller-Ladner, Ulf; De Palma, Raffaele; Engelhart, Merete; Szücs, Gabriela; de la Puente, Carlos; Midtvedt, Øyvind; Garen, Torhild; Fretheim, Håvard; Hachulla, Eric; Riccieri, Valeria; Ionescu, Ruxandra Maria; Gheorghiu, Ana Maria; Sunderkötter, Cord; Distler, Jörg; Ingegnoli, Francesca; Mouthon, Luc; Cantatore, Francesco Paolo; Ullman, Susanne; Pozzi, Maria Rosa; Eyerich, Kilian; Wiland, Piotr; Vanthuyne, Marie; Alegre-Sancho, Juan Jose; Herrmann, Kristine; De Langhe, Ellen; Baresic, Marko; Mayer, Miroslav; Yavuz, Sule; Granel, Brigitte; de Souza Müller, Carolina; Agachi, Svetlana; Stebbings, Simon; Mathieu, D'Alessandro; Vacca, Alessandra; Solanki, Kamal; Veale, Douglas; Loyo, Esthela; Tineo, Carmen; Li, Mengtao; Rosato, Edoardo; Oksel, Fahrettin; Yargucu, Figen; Tanaseanu, Cristina-Mihaela; Foti, Rosario; Ancuta, Codrina; Maurer, Britta; van Laar, Jacob; Olesinska, Marzena; Kayser, Cristiane; Fathi, Nihal; de la Peña Lefebvre, Paloma García; Martin, Jorge Juan Gonzalez; Sibilia, Jean; Litinsky, Ira; Del Galdo, Francesco; Saketkoo, Lesley Ann; Kerzberg, Eduardo; Bianch, Washington; Bianchi, Breno Valdetaro; Castellví, Ivan; Limonta, Massimiliano; Rimar, Doron; Couto, Maura; Spertini, François; Marcoccia, Antonella; Kahl, Sarah; Hsu, Ivien M; Martin, Thierry; Moiseevand, Sergey; Novikov, Pavel; Chung, Lorinda S; Schmeiser, Tim; Majewski, Dominik; Zdrojewski, Zbigniew; Martínez-Barrio, Julia; Bernardino, Vera; Riemekasten, Gabriela; Levy, Yair; Rezus, Elena; Pamuk, Omer Nuri; Puttini, Piercarlo Sarzi; Poormoghim, Hadi; Kötter, Ina; Cuomo, Giovanna; Gaches, Francis; Belloli, Laura; Sfikakis, Petros; Furst, Daniel; Ramazan, Ana-Maria; Scherer, H U; Huizinga, Tom W J; Truchetet, Marie-Elise; Lescoat, Alain; De Luca, Giacomo; Campochiaro, Corrado; van Laar, J M; Rudnicka, Lidia; Oliveira, Susana; Atzeni, Fabiola; Kuwana, Masataka; Mekinian, Arsene; Landron, Cédric; Puyade, Mathieu; Roblot, Pascal; Kubo, Satoshi; Todoroki, Yasuyuki; Null, Null. - In: RHEUMATOLOGY. - ISSN 1462-0324. - 62:Special Issue(2023), pp. 91-100. [10.1093/rheumatology/keac405]

Use of platelet inhibitors for digital ulcers related to systemic sclerosis: EUSTAR study on derivation and validation of the DU-VASC model

Moroncini, Gianluca
Membro del Collaboration Group
;
2023-01-01

Abstract

Objective: To develop and validate the prognostic prediction model DU-VASC to assist the clinicians in decision-making regarding the use of platelet inhibitors (PIs) for the management of digital ulcers in patients with systemic sclerosis. Secondly, to assess the incremental value of PIs as predictor. Methods: We analysed patient data from the European Scleroderma Trials and Research group registry (one time point assessed). Three sets of derivation/validation cohorts were obtained from the original cohort. Using logistic regression, we developed a model for prediction of digital ulcers (DUs). C-Statistics and calibration plots were calculated to evaluate the prediction performance. Variable importance plots and the decrease in C-statistics were used to address the importance of the predictors. Results: Of 3710 patients in the original cohort, 487 had DUs and 90 were exposed to PIs. For the DU-VASC model, which includes 27 predictors, we observed good calibration and discrimination in all cohorts (C-statistic = 81.1% [95% CI: 78.9%, 83.4%] for the derivation and 82.3% [95% CI: 779.3%, 85.3%] for the independent temporal validation cohort). Exposure to PIs was associated with absence of DUs and was the most important therapeutic predictor. Further important factors associated with absence of DUs were lower modified Rodnan skin score, anti-Scl-70 negativity and normal CRP. Conversely, the exposure to phosphodiesterase-5 inhibitor, prostacyclin analogues or endothelin receptor antagonists seemed to be associated with the occurrence of DUs. Nonetheless, previous DUs remains the most impactful predictor of DUs. Conclusion: The DU-VASC model, with good calibration and discrimination ability, revealed that PI treatment was the most important therapy-related predictor associated with reduced DU occurrence.
2023
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