Targeting of Deep-brain Structures in Nonhuman Primates using MR and CT Images

被引:0
|
作者
Chen, Antong [1 ]
Hines, Catherine [2 ]
Dogdas, Belma [3 ]
Bone, Ashleigh [4 ]
Lodge, Kenneth [4 ]
O'Malley, Stacey [2 ]
Connolly, Brett [2 ]
Winkelmann, Christopher T. [2 ]
Bagchi, Ansuman [3 ]
Lubbers, Laura S. [5 ]
Uslaner, Jason M. [5 ]
Johnson, Colena [4 ]
Renger, John [5 ]
Zariwala, Hatim A. [5 ]
机构
[1] Merck Res Labs, Informat IT, Appl Math & Modeling, West Point, PA 19486 USA
[2] Merck Res Labs, Imaging, West Point, PA 19486 USA
[3] Merck Res Labs, Appl Math & Modeling, Informat IT, Rahway, NJ 07065 USA
[4] Merck Res Labs, Safety Assessment & Lab Anim Resources, West Point, PA 19486 USA
[5] Merck Res Labs, Pharmacol, West Point, PA 19486 USA
关键词
stereotactic surgery; histology-MR atlas; nonrigid registration; CT; none-human primate; ALZHEIMERS-DISEASE; NUCLEUS BASALIS; CHOLINERGIC NEURONS; HUMAN STRIATUM; MEYNERT;
D O I
10.1117/12.2081620
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
In vivo gene delivery in central nervous systems of nonhuman primates (NHP) is an important approach for gene therapy and animal model development of human disease. To achieve a more accurate delivery of genetic probes, precise stereotactic targeting of brain structures is required. However, even with assistance from multi-modality 3D imaging techniques (e.g. MR and CT), the precision of targeting is often challenging due to difficulties in identification of deep brain structures, e.g. the striatum which consists of multiple substructures, and the nucleus basalis of meynert (NBM), which often lack clear boundaries to supporting anatomical landmarks Here we demonstrate a 3D-image-based intracranial stereotactic approach applied toward reproducible intracranial targeting of bilateral NBM and striatum of rhesus. For the targeting we discuss the feasibility of an atlas-based automatic approach. Delineated originally on a high resolution 3D histology-MR atlas set, the NBM and the striatum could be located on the MR image of a rhesus subject through affine and nonrigid registrations. The atlas-based targeting of NBM was compared with the targeting conducted manually by an experienced neuroscientist. Based on the targeting, the trajectories and entry points for delivering the genetic probes to the targets could be established on the CT images of the subject after rigid registration. The accuracy of the targeting was assessed quantitatively by comparison between NBM locations obtained automatically and manually, and finally demonstrated qualitatively via post mortem analysis of slices that had been labelled via Evan Blue infusion and immunohistochemistry.
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页数:9
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