Preterm labour with preterm delivery - Male, 0 - Tissue image [3280730025605081] - Open Research Data - Bridge of Knowledge

Search

Preterm labour with preterm delivery - Male, 0 - Tissue image [3280730025605081]

Description

This is the histopathological image of BRONCHUS AND LUNG tissue sample obtained in Medical University Gdańsk and deposited in ZMDL-GUMED. The sample image was taken using: VS200 Olympus slide scanner (20x magnification) and saved to DICOM format.

The detailed information about the patient, sample, and diagnosis are as follows:

Patient:

Age: 0

Clinical description: Grav III. Hbd 28. After TTTS treatment. Prematurity. Circulatory failure.

Gender: Male

Diagnosis:

Classification: ICD-10_10-20

Classification code: Chapter XV - Pregnancy, childbirth and the puerperium

Diagnosis: Preterm labour with preterm delivery

Result of the histopathological examination: Lungs adequate to the gestational age, with atelectasis, with areas of hyperemia and intraalveolar haemorrhage, and local distension (as after resuscitation). In addition, visible areas of the formation of hyaline membranes, as in ARDS.

Sample:

Material: FFPE

Collecting method: Autopsy specimen

Topography: RESPIRATORY SYSTEM AND INTRATORACIC ORGANS

Organ: BRONCHUS AND LUNG

Tissue: Lung, NOS

Type of staining: positive/HE

Staining: Not applicable

Antibody: Not applicable

Technology:

Equipment: VS200 Olympus

Lens: 20x

Organization:

Source: Medical University Gdańsk

Dataset file

8f9870fd-9da5-4c96-b600-50bad6cedad5
1.9 GB, S3 ETag , downloads: 17
The file hash is calculated from the formula
hexmd5(md5(part1)+md5(part2)+...)-{parts_count} where a single part of the file is 512 MB in size.

Example script for calculation:
https://github.com/antespi/s3md5

File details

License:
Creative Commons: by-nc-sa 4.0 open in new tab
CC BY-NC-SA
Non-commercial - Share-alike
Raw data:
Data contained in dataset was not processed.
Software:
CaseViewer 2.3

Details

Year of publication:
2022
Verification date:
2022-03-16
Creation date:
2022
Dataset language:
English
Fields of science:
  • medical sciences (Medical and Health Sciences )
DOI:
DOI ID 10.34808/p15q-7z65 open in new tab
Ethical papers:
NKBBN/421-306/2020
Verified by:
Medical University of Gdańsk

Keywords

Cite as

seen 54 times