A general procedure to select calibration drugs for lab-specific validation and calibration of proarrhythmia risk prediction models: An illustrative example using the CiPA model.
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James Kramer | David G Strauss | George Okeyo | Zhihua Li | Søren Friis | Sonja Stoelzle-Feix | Nadine Becker | Bradley J Ridder | Mohammadreza Samieegohar | Xiaomei Han | Wendy W Wu | Aaron Randolph | Phu Tran | Jiansong Sheng | Nina Brinkwirth | Maria Giustina Rotordam | Markus Rapedius | Tom A Goetze | Tim Strassmaier | Yuri Kuryshev | Phu N. Tran | Bradley J. Ridder | Caiyun Wu | D. Strauss | Zhihua Li | Jiansong Sheng | Wendy W Wu | Y. Kuryshev | T. Strassmaier | Nadine Becker | S. Stoelzle-Feix | Nina Brinkwirth | S. Friis | T. Goetze | Markus Rapedius | Xiaomei Han | George O. Okeyo | Aaron L Randolph | Caiyun Wu | Mohammadreza Samieegohar | M. G. Rotordam | James W. Kramer
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