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Table 1 Summary of segmentation methods’ properties

From: Automated macrophage counting in DLBCL tissue samples: a ROF filter based approach

 

(S1)

(S2)

(S3)

(S4)

(S5)

(S6)

Software type

proprietary

  

  

freeware extension of proprietary

    

freeware

    

Input

.png format

.ndpi(s) format

  

  

Output

count

   

 

area

 

 

annotated image

  

feature mask

  

logfile

    

Evaluation subregion

prescribed

    

manual detection

   

  

automated detection

(∙)

   

Threshold adaptation

manually

  

  

automated

  

n/a

n/a

Feature detection

none

  

  

rule-based

    

by training set

    

  1. Abbreviations: (MC) — manual count, (S1) — automated macrophage count from ROF filter based segmentation approach, (S2) — cumulative macrophage area from ROF filter based segmentation approach, (S3) — cumulative macrophage area from Tissue Studio software, (S4) — cumulative macrophage area from Halo software, (S5) — automated macrophage count from Mask R-CNN machine learning approach, (S6) — cumulative macrophage area from Mask R-CNN machine learning approach, (GE) — normalized gene expression values from nCounter platform