Main

type

5 (blog/news article)

status

21 (imported old-v2, waiting for another import)

review version

1

cleanup version

0

pending deletion

0 (-)

created at

2026-01-19 11:15:20

updated at

2026-01-19 11:15:20

Address

url

https://www.alafia.ai/post/alafia-sets-the-bar-for-digital-pathology-automated-whole-slide-image-wsi-processing-in-under-20-seconds

url length

131

url crc

44455

url crc32

1674161575

location type

1 (url matches target location, page_location is empty)

canonical status

10 (verified canonical url)

canonical page id

3751423179

Source

domain id

78279083

domain tld

660

domain parts

2

originating warc id

6576637

originating url

source type

11 (CommonCrawl)

Server response

server ip

18.211.166.153

Publication date

2025-07-16 02:45:32

Fetch attempts

0

Original html size

46029

Normalized and saved size

31460

Content

title

ALAFIA

excerpt

content

Traditionally, pathologists diagnose cancer and rare diseases by looking for abnormalities in tumor tissue and cells under a microscope, however, that is a time-consuming process often prone to errors. With the advent of whole slide imaging, pathologists are slowly migrating to a fully digital workflow. Whole slide imaging is the process of digitization of tissue samples on glass slides using digital whole slide scanners, enabling clinicians in histopathology, immunohistochemistry, and cytology to view, manipulate, interpret and digitally store the digital images, optimizing their workflow. Digitization also allows pathologists to interpret images using computational approaches, with the potential to improve accuracy, reduce inter-observer variability and provide new insights from a patient’s biopsy. Ultimately digital and computational pathology workflows will help clinicians and researchers discover, diagnose and treat diseases like cancer faster.Computational pathology requires meti...

author

updated

1770107506

Text analysis

block type

0

extracted fields

104

extracted bits

title
full content
content was extracted heuristically

detected location

0

detected language

1 (English)

category id

-

index version

1

paywall score

0

spam phrases

0

Text statistics

text nonlatin

0

text cyrillic

0

text characters

2651

text words

452

text unique words

263

text lines

1

text sentences

13

text paragraphs

1

text words per sentence

34

text matched phrases

0

text matched dictionaries

0