Defining the Minimal Long-Term Follow-Up Data Elements for Newborn Screening
Abstract
:1. Introduction
1.1. Measuring LTFU for Children Diagnosed with an NBS Disorder
1.2. Minimal LTFU Data Elements
2. Materials and Methods
2.1. Approach
2.2. LTFU Data Collection
3. Results
3.1. Defining Data Elements
3.1.1. Denominator
3.1.2. Numerators
Alive
Received Appropriate Care and Treatment Specific to Diagnosis
3.2. Analysis of LTFU Data
4. Discussion
Limitations
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Program | LTFU Program Focus (Goal, Conditions, Time Period) | Data Source(s) | Data Limitations |
---|---|---|---|
CO/WY | To ensure all children identified through newborn screening in Colorado/Wyoming receive appropriate follow-up for their disorders and to identify barriers leading to a child not receiving appropriate care. The program tracks all dried blood spot newborn screened conditions, 2002—present, except for congenital hypothyroidism (CH); these children will be added in future iterations. |
| Follow-up with specialists outside of the primary children’s hospital may be missed. |
CT | To ensure timely and appropriate follow-up care for people diagnosed with a condition through newborn screening in CT. The network emphasizes comprehensive care coordination for optimal long-term outcomes by utilizing electronic health record-based registries and dashboards. The Network’s LTFU registry currently tracks patients identified with a condition through newborn screening in CT since March 1, 2019, except for cystic fibrosis (CF), critical congenital heart disease (CCHD), or hearing screen; separate programs follow those patients. |
| Follow-up with specialists outside of the primary children’s hospital can be missed if not sent to health information exchange |
NY | To develop a sustainable infrastructure to expand the newborn screening LTFU patient registry to include all the inherited metabolic disorders (IMD) on the newborn screening panel. |
| Need Informed Consent |
ND | To ensure that newborns and children identified through newborn screening (NBS) achieve the best possible outcomes by utilizing a comprehensive model of LTFU that demonstrates collaborations between clinicians, public health agencies and families to create a system of care that can assess and coordinate follow-up and treatment of newborn screening conditions. |
| Starting screening for Pompe/MPSI in 2024, limited data for SMA |
UCSF | To design and implement a comprehensive, family-centered LTFU program that becomes the standard for following clinical outcomes, supporting child and caregiver well-being, and anticipating future needs of children with Severe Combined Immunodeficiency (SCID) and T-cell lymphopenia (TCL) disorders. |
| Need Informed Consent and unable to report on deceased patients. |
ACMG | To develop a comprehensive LTFU model system that demonstrates collaborations between clinicians, public health agencies, and families and assures the best possible outcomes for individuals identified through newborn screening. The project uses spinal muscular atrophy (SMA) as a model collecting data on cases within the first five years of life, engaging with up to five clinical sites, and reporting annual, de-identified aggregated data to state programs through the use of online dashboards. The type and scope of data collected were informed by parents and families with a family member who has SMA. |
| Only retrospective data based on a REDCap survey with 81 questions (53/81 longitudinal) with up to five years of life per case; minimum of one case per center |
Variable | Definition |
---|---|
Number Of Children Diagnosed as Having the Condition |
|
Number Of Children Who Died or Moved Before the Year Reported |
|
Number Of Children with Condition Who Are Alive |
|
Number Of Children Who Had Contact with A Specialist for Their Disorder Within the Last 12 Months |
|
Number Of Children Who Received Appropriate Care Specific to The Diagnosis Within the Last 12 Month |
|
Birth Cohort | Diagnosis as Determined by Published Case Definitions [15] | Children Known to Be Alive and Living in the Jurisdiction at the Beginning of 2022/Number of Children with Disorder | Children Who Had at Least One Contact with Specialist in 2022/Number of Children Known to Be Alive and in Jurisdiction at the Beginning of 2022 | Children Receiving Appropriate Care in 2022/Number of Children Known to Be Alive and in Jurisdiction at the Beginning of 2022 |
---|---|---|---|---|
All Birth Cohorts | All NBS Disorders Reported | 563/672 (83.8%) | 518/563 (92.0%) | 494/563 (87.7%) |
2018 | All NBS Disorders Reported | 67/91 (73.6%) | 57/67 (85.1%) | 55/67 (82.1%) |
2019 | 100/132 (75.8%) | 94/100 (94.0%) | 94/100 (94.0%) | |
2020 | 129/155 (83.2%) | 121/129 (93.8%) | 114/129 (88.4%) | |
2021 | 139/155 (89.7%) | 124/139 (89.2%) | 116/139 (83.5%) | |
2022 | 128/139 (92.1%) | 122/128 (95.3%) | 115/128 (89.8%) | |
2018 | Metabolic Conditions | 20/24 (83.3%) | 15/20 (75.0%) | 15/20 (75.0%) |
2019 | 18/24 (75.0%) | 14/18 (77.8%) | 14/18 (77.8%) | |
2020 | 29/34 (85.3%) | 26/29 (89.7%) | 20/29 (69.0%) | |
2021 | 38/40 (95.0%) | 29/38 (76.3%) | 25/38 (65.8%) | |
2022 | 28/29 (96.6%) | 24/28 (85.7%) | 21/28 (75.0%) | |
2018 | Congenital Adrenal Hyperplasia | 8/10 (80.0%) | 8/8 (100.0%) | 7/8 (87.5%) |
2019 | 8/11 (72.7%) | 8/8 (100.0%) | 8/8 (100.0%) | |
2020 | 8/8 (100.0%) | 7/8 (87.5%) | 7/8 (87.5%) | |
2021 | 10/10 (100.0%) | 9/10 (90.0%) | 8/10 (80.0%) | |
2022 | 6/6 (100.0%) | 6/6 (100.0%) | 6/6 (100.0%) | |
2018 | Congenital Hypothyroidism | None reported | None reported | None reported |
2019 | 16/26 (61.5%) | 16/16 (100.0%) | 16/16 (100.0%) | |
2020 | 29/37 (78.4%) | 29/29 (100.0%) | 29/29 (100.0%) | |
2021 | 32/39 (82.1%) | 32/32 (100.0%) | 32/32 (100.0%) | |
2022 | 29/35 (82.9%) | 29/29 (100.0%) | 27/29 (93.1%) | |
2018 | Hemoglobinopathies | 10/19 (52.6%) | 9/10 (90.0%) | 8/10 (80.0%) |
2019 | 19/26 (73.1%) | 18/19 (94.7%) | 18/19 (94.7%) | |
2020 | 22/29 (75.9%) | 19/22 (86.4%) | 18/22 (81.8%) | |
2021 | 18/21 (85.7%) | 15/18 (83.3%) | 13/18 (72.2%) | |
2022 | 20/21 (95.2%) | 20/20 (100.0%) | 18/20 (90.0%) | |
2018 | Cystic Fibrosis | 17/21 (81.0%) | 16/17 (94.1%) | 16/17 (94.1%) |
2019 | 23/27 (85.2%) | 23/23 (100.0%) | 23/23 (100.0%) | |
2020 | 21/22 (95.5%) | 21/21 (100.0%) | 21/21 (100.0%) | |
2021 | 14/17 (82.4%) | 13/14 (92.9%) | 13/14 (92.9%) | |
2022 | 20/21 (95.2%) | 20/20 (100.0%) | 20/20 (100.0%) | |
2018 | Severe Combined Immunodeficiency (SCID) | 6/11 (54.5%) | 3/6 (50.0%) | 3/6 (50.0%) |
2019 | 6/8 (75.0%) | 5/6 (83.3%) | 5/6 (83.3%) | |
2020 | 11/14 (78.6%) | 10/11 (90.9%) | 10/11 (90.9%) | |
2021 | 4/4 (100.0%) | 3/4 (75.0%) | 3/4 (75.0%) | |
2022 | 9/10 (90.0%) | 7/9 (77.8%) | 7/9 (77.8%) | |
2018 | Non-SCID T-cell lymphopenia | 4/4 (100.0%) | 4/4 (100.0%) | 4/4 (100.0%) |
2019 | 4/4 (100.0%) | 4/4 (100.0%) | 4/4 (100.0%) | |
2020 | 1/1 (100.0%) | 1/1 (100.0%) | 1/1 (100.0%) | |
2021 | 4/4 (100.0%) | 4/4 (100.0%) | 4/4 (100.0%) | |
2022 | 8/8 (100.0%) | 8/8 (100.0%) | 8/8 (100.0%) | |
2018 | Spinal Muscular Atrophy | 2/2 (100.0%) | 2/2 (100.0%) | 2/2 (100.0%) |
2019 | 6/6 (100.0%) | 6/6 (100.0%) | 6/6 (100.0%) | |
2020 | 8/10 (80.0%) | 8/8 (100.0%) | 8/8 (100.0%) | |
2021 | 19/20 (95.0%) | 19/19 (100.0%) | 18/19 (94.7%) | |
2022 | 8/9 (88.9%) | 8/8 (100.0%) | 8/8 (100.0%) |
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Kellar-Guenther, Y.; Barringer, L.; Raboin, K.; Nichols, G.; Chou, K.Y.F.; Nguyen, K.; Burke, A.R.; Fawbush, S.; Meyer, J.B.; Dorsey, M.; et al. Defining the Minimal Long-Term Follow-Up Data Elements for Newborn Screening. Int. J. Neonatal Screen. 2024, 10, 37. https://doi.org/10.3390/ijns10020037
Kellar-Guenther Y, Barringer L, Raboin K, Nichols G, Chou KYF, Nguyen K, Burke AR, Fawbush S, Meyer JB, Dorsey M, et al. Defining the Minimal Long-Term Follow-Up Data Elements for Newborn Screening. International Journal of Neonatal Screening. 2024; 10(2):37. https://doi.org/10.3390/ijns10020037
Chicago/Turabian StyleKellar-Guenther, Yvonne, Lauren Barringer, Katherine Raboin, Ginger Nichols, Kathy Y. F. Chou, Kathy Nguyen, Amy R. Burke, Sandy Fawbush, Joyal B. Meyer, Morna Dorsey, and et al. 2024. "Defining the Minimal Long-Term Follow-Up Data Elements for Newborn Screening" International Journal of Neonatal Screening 10, no. 2: 37. https://doi.org/10.3390/ijns10020037