id
type
0 (not classified)
status
21 (imported old-v2, waiting for another import)
review version
0
cleanup version
0
pending deletion
0 (-)
created at
2025-09-18 22:09:50
updated at
2025-12-03 22:20:41
url
https://news.engineering.utoronto.ca/this-alumni-startup-uses-ai-to-visualize-wound-healing/
url length
92
url crc
14731
url crc32
584071563
location type
1 (url matches target location, page_location is empty)
canonical status
10 (verified canonical url)
canonical page id
domain id
domain tld
124
domain parts
0
originating warc id
-
originating url
https://data.commoncrawl.org/crawl-data/CC-MAIN-2025-33/segments/1754151576444.70/warc/CC-MAIN-20250814131950-20250814161950-00977.warc.gz
source type
11 (CommonCrawl)
server ip
Publication date
2025-08-06 08:41:31
Fetch attempts
0
Original html size
179450
Normalized and saved size
66051
title
This alumni startup uses AI to visualize wound healing
excerpt
content
Swift Skin and Wound, a wound care management software created by Swift Medical, helps health care providers quickly and accurately track the progression of chronic wounds and the effectiveness of their treatment. (Courtesy: Swift Medical) The global incidence of chronic wounds — holes in the skin that can persist for weeks, months or years — is rising rapidly: in the United States alone, more than 6.5 million patients live with non-healing wounds. Carlo Perez (CompE 0T2 + PEY), co-founder and CEO of Toronto-based Swift Medical Inc., believes that machine vision and artificial intelligence can help. “Mapping a wound bed is even more challenging than mapping the surface of Mars,” says Perez. “You can’t code enough conditional statements to deal with every possible situation, so that’s where machine learning and artificial intelligence come in.” Chronic wounds have many causes and aggravating factors, including a rapidly aging population, increasing rates of obesity and a global p...
author
Tyler Irving
updated
1767865444
block type
0
extracted fields
237
extracted bits
featured image
article author
title
full content
content was extracted heuristically
OpenGraph suggests this is an article
detected location
0
detected language
1 (English)
category id
Medicine [en] (226)
index version
2025123101
paywall score
0
spam phrases
0
text nonlatin
0
text cyrillic
0
text characters
3710
text words
741
text unique words
378
text lines
1
text sentences
29
text paragraphs
1
text words per sentence
25
text matched phrases
3
text matched dictionaries
5
links self subdomains
0
links other subdomains
4
links other domains
4
links spam adult
0
links spam random
0
links spam expired
0
links ext activities
0
links ext ecommerce
0
links ext finance
0
links ext crypto
0
links ext booking
0
links ext news
1
links ext leaks
0
links ext ugc
2
links ext klim
0
links ext generic
0