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  3. /SAMP-Score: ML Method for Screening Pro-Senescence Compounds in P16 Cancer Cell
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  3. /SAMP-Score: ML Method for Screening Pro-Senescence Compounds in P16 Cancer Cell
Last activity 5h agoPosted Nov 26, 2025 at 4:14 PM EST

SAMP-Score: ML Method for Screening Pro-Senescence Compounds in P16 Cancer Cell

7777777phil
1 points
1 comments

Mood

informative

Sentiment

positive

Category

research

Key topics

Medical Research
Machine Learning
Cell Senescence
Debate intensity20/100

Discussion Activity

Light discussion

First comment

N/A

Peak period

1

Hour 1

Avg / period

1

Key moments

  1. 01Story posted

    Nov 26, 2025 at 4:14 PM EST

    5h ago

    Step 01
  2. 02First comment

    Nov 26, 2025 at 4:14 PM EST

    0s after posting

    Step 02
  3. 03Peak activity

    1 comments in Hour 1

    Hottest window of the conversation

    Step 03
  4. 04Latest activity

    Nov 26, 2025 at 4:14 PM EST

    5h ago

    Step 04

Generating AI Summary...

Analyzing up to 500 comments to identify key contributors and discussion patterns

Discussion (1 comments)
Showing 1 comments
7777777philAuthor
5h ago
IMO here ML actually delivers the biggest benefit today: by developing a machine learning classifier based on morphological features rather than molecular markers, they've created a screening tool that can distinguish baseline marker expression from true senescence induction in these challenging cancer subtypes. The challenge with basal-like cancers is that they constitutively express many canonical senescence markers even while proliferating, making it nearly impossible to determine if a therapeutic compound has actually induced growth arrest.
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ID: 46062390Type: storyLast synced: 11/26/2025, 9:16:09 PM

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