OBJECTIVE: Because cystic fibrosis can be difficult to diagnose and treat early, newborn screening programs have rapidly developed nationwide but methods vary widely. We therefore investigated the costs and consequences or specific outcomes of the 2 most commonly used methods. METHODS: With available data on screening and follow-up, we used a simulation approach with decision trees to compare immunoreactive trypsinogen (IRT) screening followed by a second IRT test against an IRT/DNA analysis. By using a Monte Carlo simulation program, variation in the model parameters for counts at various nodes of the decision trees, as well as for costs, are included and applied to fictional cohorts of 100 000 newborns. The outcome measures included the numbers of newborns given a diagnosis of cystic fibrosis and costs of screening strategy at each branch and cost per newborn. RESULTS: Simulations revealed a substantial number of potential missed diagnoses for the IRT/IRT system versus IRT/DNA. Although the IRT/IRT strategy with commonly used cutoff values offers an average overall cost savings of $2.30 per newborn, a breakdown of costs by societal segments demonstrated higher out-of-pocket costs for families. Two potential system failures causing delayed diagnoses were identified relating to the screening protocols and the follow-up system. CONCLUSIONS: The IRT/IRT screening algorithm reduces the costs to laboratories and insurance companies but has more system failures. IRT/DNA offers other advantages, including fewer delayed diagnoses and lower out-of-pocket costs to families.
OBJECTIVE: Because cystic fibrosis can be difficult to diagnose and treat early, newborn screening programs have rapidly developed nationwide but methods vary widely. We therefore investigated the costs and consequences or specific outcomes of the 2 most commonly used methods. METHODS: With available data on screening and follow-up, we used a simulation approach with decision trees to compare immunoreactive trypsinogen (IRT) screening followed by a second IRT test against an IRT/DNA analysis. By using a Monte Carlo simulation program, variation in the model parameters for counts at various nodes of the decision trees, as well as for costs, are included and applied to fictional cohorts of 100 000 newborns. The outcome measures included the numbers of newborns given a diagnosis of cystic fibrosis and costs of screening strategy at each branch and cost per newborn. RESULTS: Simulations revealed a substantial number of potential missed diagnoses for the IRT/IRT system versus IRT/DNA. Although the IRT/IRT strategy with commonly used cutoff values offers an average overall cost savings of $2.30 per newborn, a breakdown of costs by societal segments demonstrated higher out-of-pocket costs for families. Two potential system failures causing delayed diagnoses were identified relating to the screening protocols and the follow-up system. CONCLUSIONS: The IRT/IRT screening algorithm reduces the costs to laboratories and insurance companies but has more system failures. IRT/DNA offers other advantages, including fewer delayed diagnoses and lower out-of-pocket costs to families.
Authors: Scott D Grosse; Coleen A Boyle; Jeffrey R Botkin; Anne Marie Comeau; Martin Kharrazi; Margaret Rosenfeld; Benjamin S Wilfond Journal: MMWR Recomm Rep Date: 2004-10-15
Authors: Carlo Castellani; Kevin W Southern; Keith Brownlee; Jeannette Dankert Roelse; Alistair Duff; Michael Farrell; Anil Mehta; Anne Munck; Rodney Pollitt; Isabelle Sermet-Gaudelus; Bridget Wilcken; Manfred Ballmann; Carlo Corbetta; Isabelle de Monestrol; Philip Farrell; Maria Feilcke; Claude Férec; Silvia Gartner; Kevin Gaskin; Jutta Hammermann; Nataliya Kashirskaya; Gerard Loeber; Milan Macek; Gita Mehta; Andreas Reiman; Paolo Rizzotti; Alec Sammon; Dorota Sands; Alan Smyth; Olaf Sommerburg; Toni Torresani; Georges Travert; Annette Vernooij; Stuart Elborn Journal: J Cyst Fibros Date: 2009-02-26 Impact factor: 5.482
Authors: Mei W Baker; Anne E Atkins; Suzanne K Cordovado; Miyono Hendrix; Marie C Earley; Philip M Farrell Journal: Genet Med Date: 2015-02-12 Impact factor: 8.822