The goal of this proposal is to phenotype early- to mid-gestational mouse embryos by segmenting select organ systems in 3D data sets acquired in utero with high-frequency ultrasound (HFU). The International Mouse Phe- notyping Consortium (IMPC), which includes the NIH Knockout (KO) Mouse Phenotyping Program (KOMP2), will generate 20,000 mouse strains in the next decade, including many important models of human structural birth defects and congenital diseases. The development of phenotyping methods that provide for ef?cient pipeline analyses of defects in embryonic growth in the KO mouse strains is a high priority for this effort. An in utero 3D imaging approach, enabling volumetric and longitudinal analyses of a variety of organ systems over a range of early- to mid-gestational stage mouse embryos, would provide added bene?t and critical additional in vivo data not currently available. Commercial HFU systems are widely available in many research centers largely thanks to the NIH-funded Small Animal Imaging Research Programs and Shared Instrumentation Programs. HFU is therefore an excellent candidate modality to provide in utero 3D image data that can be quantitatively analyzed and archived to support the KOMP2/IMPC embryonic lethal phenotyping pipeline and future phenotyping efforts. We propose to develop and validate in utero 3D HFU image-acquisition protocols and image-processing meth- ods that permit noninvasive, longitudinal studies of embryonic development and, in particular, the detection and characterization of KO phenotypes. Volumetric HFU data will be collected in utero from mouse embryos staged between E9.5 to 15.5 in order to establish a database of normal development. Algorithms will be developed to segment 3D regions and extract parameters that quantify embryonic stage and identify regional changes between normal and KO embryos. We will acquire data with a custom, annular-array system and with a VisualSonics Vevo 2100. The ?ne-resolution annular-array data will be used to initially develop the image-processing algorithms and then the algorithms will be adapted for Vevo 2100 data. We will compare the quantitative parameters derived from the segmentation results obtained from the two scanners to ensure that the Vevo 2100 is able to provide equivalent mutant detection and quanti?cation. Initial testing will be undertaken using wild-type and En1 and Gli2 mutants that have known defects. Finally, the acquisition and processing protocols will be applied to 3D Vevo 2100 data from 5-10 KOMP2 KO mouse lines with embryonic defects in a variety of organ systems to validate the HFU methods for detecting and characterizing phenotypes in these mutant embryos.

Public Health Relevance

The goal of this proposal is to establish that 3D high-frequency ultrasound data sets can be used to phenotype early- to mid-gestational in utero mouse embryos through the segmentation of select organ systems.

Agency
National Institute of Health (NIH)
Institute
National Institute of Biomedical Imaging and Bioengineering (NIBIB)
Type
Research Project (R01)
Project #
5R01EB022950-04
Application #
9746723
Study Section
Biomedical Imaging Technology Study Section (BMIT)
Program Officer
King, Randy Lee
Project Start
2016-09-30
Project End
2021-06-30
Budget Start
2019-07-01
Budget End
2021-06-30
Support Year
4
Fiscal Year
2019
Total Cost
Indirect Cost
Name
Riverside Research Institute
Department
Type
DUNS #
046822615
City
New York
State
NY
Country
United States
Zip Code
10038
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Ketterling, Jeffrey A; Aristizábal, Orlando; Yiu, Billy Y S et al. (2017) High-speed, high-frequency ultrasound, in utero vector-flow imaging of mouse embryos. Sci Rep 7:16658