| Literature DB >> 35091676 |
David Dum1, Tjark L C Henke1, Tim Mandelkow1, Cheng Yang1, Elena Bady1, Jonas B Raedler1,2, Ronald Simon3, Guido Sauter1, Maximilian Lennartz1, Franziska Büscheck1, Andreas M Luebke1, Anne Menz1, Andrea Hinsch1, Doris Höflmayer1, Sören Weidemann1, Christoph Fraune1, Katharina Möller1, Patrick Lebok1, Ria Uhlig1, Christian Bernreuther1, Frank Jacobsen1, Till S Clauditz1, Waldemar Wilczak1, Sarah Minner1, Eike Burandt1, Stefan Steurer1, Niclas C Blessin1.
Abstract
CTLA-4 is an inhibitory immune checkpoint receptor and a negative regulator of anti-tumor T-cell function. This study is aimed for a comparative analysis of CTLA-4+ cells between different tumor entities. To quantify CTLA-4+ cells, 4582 tumor samples from 90 different tumor entities as well as 608 samples of 76 different normal tissue types were analyzed by immunohistochemistry in a tissue microarray format. Two different antibody clones (MSVA-152R and CAL49) were validated and quantified using a deep learning framework for automated exclusion of unspecific immunostaining. Comparing both CTLA-4 antibodies revealed a clone dependent unspecific staining pattern in adrenal cortical adenoma (63%) for MSVA-152R and in pheochromocytoma (67%) as well as hepatocellular carcinoma (36%) for CAL49. After automated exclusion of non-specific staining reaction (3.6%), a strong correlation was observed for the densities of CTLA-4+ lymphocytes obtained by both antibodies (r = 0.87; p < 0.0001). A high CTLA-4+ cell density was linked to low pT category (p < 0.0001), absent lymph node metastases (p = 0.0354), and PD-L1 expression in tumor cells or inflammatory cells (p < 0.0001 each). A high CTLA-4/CD3-ratio was linked to absent lymph node metastases (p = 0.0295) and to PD-L1 positivity on immune cells (p = 0.0026). Marked differences exist in the number of CTLA-4+ lymphocytes between tumors. Analyzing two independent antibodies by a deep learning framework can facilitate automated quantification of immunohistochemically analyzed target proteins such as CTLA-4.Entities:
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Year: 2022 PMID: 35091676 PMCID: PMC9162915 DOI: 10.1038/s41374-022-00728-4
Source DB: PubMed Journal: Lab Invest ISSN: 0023-6837 Impact factor: 5.502
Association between the CTLA-4+ cell density (cells/mm2) as well as the CTLA4/CD3-ratio and clinicopathological parameters.
| Characteristic | Patient number (%) | CTLA4+ cell density | Patient number (%) | CTLA4/CD3-ratio | ||
|---|---|---|---|---|---|---|
| Total | 4582 | 673 (±1482) median: 214 | 4292 | 17 (±52) median: 2 | ||
| Pathological tumor stage | <0.0001 | 0.1846 | ||||
| pT1 | 763 (16.7%) | 410 (±570) | 740 (17.2%) | 20 (±56) | ||
| pT2 | 746 (16.3%) | 350 (±467) | 714 (16.6%) | 18 (±46) | ||
| pT3 | 839 (18.3%) | 273 (±364) | 710 (16.5%) | 16 (±39) | ||
| pT4 | 341 (7.4%) | 306 (±345) | 328 (7.6%) | 15 (±30) | ||
| Missing data | 1893 (41.3%) | - | 1800 (41.9%) | - | ||
| Pathological nodal stage | 0.0031 | 0.0354 | ||||
| pN− | 839 (18.3%) | 373 (±491) | 794 (18.5%) | 21 (±55) | ||
| pN+ | 1003 (21.9%) | 312 (±398) | 962 (22.4%) | 16 (±37) | ||
| Missing data | 2740 (59.8%) | - | 2536 (59.1%) | - | ||
| PD-L1 on tumor cells | <0.0001 | 0.0026 | ||||
| Negative | 2583 (56.4%) | 628 (±1382) | 2498 (58.2%) | 16 (±49) | ||
| Positive | 662 (14.4%) | 920 (±1744) | 605 (14.1%) | 23 (±64) | ||
| Missing data | 1337 (29.2%) | - | 1189 (27.7%) | - | ||
| PD-L1 on immune cells | <0.0001 | 0.1010 | ||||
| Negative | 2063 (45.0%) | 310 (±534) | 2068 (48.2%) | 19 (±59) | ||
| Positive | 1371 (29.9%) | 1233 (±2059) | 1231 (28.7%) | 16 (±45) | ||
| Missing data | 1148 (25.1%) | - | 993 (23.1%) | - | ||
| HPV | 0.0130 | 0.9020 | ||||
| Negative | 326 (7.1%) | 393 (±392) | 291 (6.8%) | 25 (±56) | ||
| Positive | 243 (5.3%) | 489 (±524) | 221 (5.2%) | 25 (±40) | ||
| Missing data | 4013 (87.6%) | - | 3780 (88.0%) | - |
Fig. 1Fraction of non-specific staining detect by an AI framework trained for non-specific staining.
The mean fraction of non-specific stained cells is shown for both CTLA-4 antibody clones MSVA-152R (black) and CAL49 (grey). Error bars indicate standard deviations.
Fig. 2CTLA-4 immunostaining of normal tissues.
The panels show for the antibody MSVA-152R a strong membranous positivity of a subset of lymphocytes in the tonsil (A), a strong cytoplasmatic staining of the adrenal cortex (B) and a cytoplasmic granular staining in a fraction of superficial epithelial cells of the stomach (C) and of renal tubuli (D). For the antibody CAL49, a strong membranous positivity of the same subset of lymphocytes in the tonsil (E), a weak cytoplasmatic staining of the adrenal medulla (F), a strong cytoplasmic staining superficial epithelial cells of the stomach (G), and an apical membranous staining of renal tubuli (H) is seen. The images (A–D) and (E–H) are from consecutive tissue sections and taken at 20x magnification.
Fig. 3Distinct target staining and non-overlapping cross-reactivities of two CTLA-4 antibodies.
The panels show for the antibody MSVA-152R a strong staining of a subset of lymphocytes in a Hodgkin’s lymphoma (A), a strong cytoplasmatic staining of an adrenocortical adenoma (B) absence of staining in a pheochromocytoma (C), and a staining of few lymphocytes in a hepatocellular carcinoma (D). For the antibody CAL49, an equally strong staining of the identical subset of lymphocytes in a Hodgkin’s lymphoma is seen (E), while staining is lacking in an adrenocortical adenoma (F), and a cytoplasmic staining occurs in a pheochromocytoma (G) and a hepatocellular carcinoma (H). The images (A–D) and (E–H) are from consecutive tissue sections and taken at 20x magnification.
Fig. 4CTLA-4 density in human neoplasms.
Distribution of the CTLA-4+ cell density (cell/mm2) across 90 different human tumor entities. In total 4582 tumor samples, represented by gray dots, were analyzed. The vertical bars indicate the mean density per entity.
CTLA-4+ cell densities (cells/mm2) and CTLA-4/CD3-ratio in different tumor categories.
| Characteristic | Patient number (%) | Mean density of both CTLA4-Ab | Patient number (%) | CTLA4/CD3-ratio | ||
|---|---|---|---|---|---|---|
| Total | 4582 | 673 (±1482) median: 214 | 4292 | 17 (±52) median: 2 | ||
| Benign/malignant | <0.0001 | 0.3442 | ||||
| Malignant | 3470 (75.7%) | 734 (±1621) | 3259 (75.9%) | 15 (±40) | ||
| Benign | 432 (9.4%) | 395 (±663) | 452 (10.5%) | 18 (±65) | ||
| Origin | <0.0001 | <0.0001 | ||||
| Lymphoma | 424 (9.3%) | 3642 (±3207) | 297 (6.9%) | 5 (±7) | ||
| Biphasic | 133 (2.9%) | 609 (±1057) | 128 (3.0%) | 11 (±29) | ||
| Germ cell tumor | 127 (2.8%) | 401 (±468) | 144 (3.4%) | 8 (±24) | ||
| Epithelial | 2954 (64.5%) | 335 (±471) | 2855 (66.5%) | 18 (±48) | ||
| Melanocytic | 64 (1.4%) | 307 (±340) | 70 (1.6%) | 25 (±43) | ||
| Mesothelial | 34 (0.7%) | 281 (±320) | 35 (0.8%) | 15 (±31) | ||
| Mesenchymal | 235 (5.1%) | 145 (±268) | 255 (5.9%) | 9 (±31) | ||
| Lymphoma | <0.0001 | 0.0873 | ||||
| Hodgkin’s lymphoma | 96 (2.1%) | 5916 (±3826) | 50 (1.2%) | 3 (±2) | ||
| NHL B-cell | 305 (6.7%) | 2997 (±2710) | 236 (5.5%) | 5 (±8) | ||
| NHL T-cell | 23 (0.5%) | 2701 (±1949) | 11 (0.3%) | 6 (±7) | ||
| Epithelial tumors | <0.0001 | 0.2193 | ||||
| Squamous | 908 (19.8%) | 421 (±469) | 861 (20.1%) | 20 (±45) | ||
| Urothelial | 33 (0.7%) | 418 (±347) | 37 (0.8%) | 15 (±46) | ||
| Adeno | 1477 (32.2%) | 268 (±375) | 1419 (33.1%) | 16 (±43) | ||
| Renal | 113 (2.5%) | 256 (±269) | 120 (2.8%) | 17 (±34) | ||
| Adenocarcinomas | <0.0001 | 0.1630 | ||||
| Lower GI | 89 (1.9%) | 448 (±343) | 78 (1.8%) | 20 (±33) | ||
| Breast | 245 (5.4%) | 411 (±505) | 220 (5.1%) | 18 (±52) | ||
| Thyroid gland | 248 (5.4%) | 300 (±452) | 93 (2.2%) | 23 (±49) | ||
| Hep/Biliary/Pancreas | 211 (4.6%) | 258 (±432) | 207 (4.8%) | 17 (±45) | ||
| Gyn | 345 (7.5%) | 256 (±336) | 332 (7.7%) | 15 (±40) | ||
| Upper GI | 240 (5.2%) | 249 (±295) | 221 (5.1%) | 17 (±54) | ||
| Adrenal cortical | 21 (0.5%) | 221 (±324) | 25 (0.6%) | 14 (±28) | ||
| Prostate | 78 (1.7%) | 110 (±124) | 242 (5.6%) | 8 (±23) |