3 research outputs found
SegmentAnyBone: A Universal Model that Segments Any Bone at Any Location on MRI
Magnetic Resonance Imaging (MRI) is pivotal in radiology, offering
non-invasive and high-quality insights into the human body. Precise
segmentation of MRIs into different organs and tissues would be highly
beneficial since it would allow for a higher level of understanding of the
image content and enable important measurements, which are essential for
accurate diagnosis and effective treatment planning. Specifically, segmenting
bones in MRI would allow for more quantitative assessments of musculoskeletal
conditions, while such assessments are largely absent in current radiological
practice. The difficulty of bone MRI segmentation is illustrated by the fact
that limited algorithms are publicly available for use, and those contained in
the literature typically address a specific anatomic area. In our study, we
propose a versatile, publicly available deep-learning model for bone
segmentation in MRI across multiple standard MRI locations. The proposed model
can operate in two modes: fully automated segmentation and prompt-based
segmentation. Our contributions include (1) collecting and annotating a new MRI
dataset across various MRI protocols, encompassing over 300 annotated volumes
and 8485 annotated slices across diverse anatomic regions; (2) investigating
several standard network architectures and strategies for automated
segmentation; (3) introducing SegmentAnyBone, an innovative foundational
model-based approach that extends Segment Anything Model (SAM); (4) comparative
analysis of our algorithm and previous approaches; and (5) generalization
analysis of our algorithm across different anatomical locations and MRI
sequences, as well as an external dataset. We publicly release our model at
https://github.com/mazurowski-lab/SegmentAnyBone.Comment: 15 pages, 15 figure
Anaesthetic Management of Disseminated Intravascular Coagulation (DIC) in Pregnancy at a Tertiary Care Hospital
<p><strong>ABSTRACT</strong></p><p>Abruptio placenta can lead to rapid separation of the placenta and result in fetal demise. Secondary to abruption, Disseminated Intravascular Coagulation (DIC) can occur due to inappropriate activation of the coagulation and fibrinolytic system. Once DIC develops, early recognition, specific treatment and repeated tests with aggressive correction of coagulation and electrolyte imbalance along with avoidance of hypothermia and metabolic acidosis help in preventing multi organ failure and mortality.</p>
Derivation of high-resolution MRI atlases of the human cerebellum at 3 T and segmentation using multiple automatically generated templates
The cerebellum has classically been linked to motor learning and coordination. However, there is renewed interest in the role of the cerebellum in non-motor functions such as cognition and in the context of different neuropsychiatric disorders. The contribution of neuroimaging studies to advancing understanding of cerebellar structure and function has been limited, partly due to the cerebellum being understudied as a result of contrast and resolution limitations of standard structural magnetic resonance images (MRI). These limitations inhibit proper visualization of the highly compact and detailed cerebellar foliations. In addition, there is a lack of robust algorithms that automatically and reliably identify the cerebellum and its subregions, further complicating the design of large-scale studies of the cerebellum. As such, automated segmentation of the cerebellar lobules would allow detailed population studies of the cerebellum and its subregions. In this manuscript, we describe a novel set of high-resolution in vivo atlases of the cerebellum developed by pairing MR imaging with a carefully validated manual segmentation protocol. Using these cerebellar atlases as inputs, we validate a novel automated segmentation algorithm that takes advantage of the neuroanatomical variability that exists in a given population under study in order to automatically identify the cerebellum, and its lobules. Our automatic segmentation results demonstrate good accuracy in the identification of all lobules (mean Kappa [κ] = 0.731; range 0.40–0.89), and the entire cerebellum (mean κ = 0.925; range 0.90–0.94) when compared to “gold-standard” manual segmentations. These results compare favorably in comparison to other publically available methods for automatic segmentation of the cerebellum. The completed cerebellar atlases are available freely online (http://imaging-genetics.camh.ca/cerebellum) and can be customized to the unique neuroanatomy of different subjects using the proposed segmentation pipeline (https://github.com/pipitone/MAGeTbrain)