Evaluating tubulointerstitial compartments in renal biopsy specimens using a deep learning-based approach for classifying normal and abnormal tubules.


Journal

PloS one
ISSN: 1932-6203
Titre abrégé: PLoS One
Pays: United States
ID NLM: 101285081

Informations de publication

Date de publication:
2022
Historique:
received: 25 01 2022
accepted: 27 06 2022
entrez: 11 7 2022
pubmed: 12 7 2022
medline: 14 7 2022
Statut: epublish

Résumé

Renal pathology is essential for diagnosing and assessing the severity and prognosis of kidney diseases. Deep learning-based approaches have developed rapidly and have been applied in renal pathology. However, methods for the automated classification of normal and abnormal renal tubules remain scarce. Using a deep learning-based method, we aimed to classify normal and abnormal renal tubules, thereby assisting renal pathologists in the evaluation of renal biopsy specimens. Consequently, we developed a U-Net-based segmentation model using randomly selected regions obtained from 21 renal biopsy specimens. Further, we verified its performance in multiclass segmentation by calculating the Dice coefficients (DCs). We used 15 cases of tubulointerstitial nephritis to assess its applicability in aiding routine diagnoses conducted by renal pathologists and calculated the agreement ratio between diagnoses conducted by two renal pathologists and the time taken for evaluation. We also determined whether such diagnoses were improved when the output of segmentation was considered. The glomeruli and interstitium had the highest DCs, whereas the normal and abnormal renal tubules had intermediate DCs. Following the detailed evaluation of the tubulointerstitial compartments, the proximal, distal, atrophied, and degenerated tubules had intermediate DCs, whereas the arteries and inflamed tubules had low DCs. The annotation and output areas involving normal and abnormal tubules were strongly correlated in each class. The pathological concordance for the glomerular count, t, ct, and ci scores of the Banff classification of renal allograft pathology remained high with or without the segmented images. However, in terms of time consumption, the quantitative assessment of tubulitis, tubular atrophy, degenerated tubules, and the interstitium was improved significantly when renal pathologists considered the segmentation output. Deep learning algorithms can assist renal pathologists in the classification of normal and abnormal tubules in renal biopsy specimens, thereby facilitating the enhancement of renal pathology and ensuring appropriate clinical decisions.

Identifiants

pubmed: 35816495
doi: 10.1371/journal.pone.0271161
pii: PONE-D-22-02424
pmc: PMC9273082
doi:

Types de publication

Journal Article

Langues

eng

Sous-ensembles de citation

IM

Pagination

e0271161

Déclaration de conflit d'intérêts

The authors have declared that no competing interests exist.

Références

J Am Soc Nephrol. 2021 Feb 23;:
pubmed: 33622976
Comput Med Imaging Graph. 2021 Jun;90:101930
pubmed: 33964790
QJM. 2015 Jul;108(7):527-32
pubmed: 25434050
Kidney Int. 2017 Apr;91(4):787-789
pubmed: 28314581
J Pathol. 2020 Sep;252(1):53-64
pubmed: 32542677
J Am Soc Nephrol. 2018 Aug;29(8):2213-2224
pubmed: 29866798
Nat Rev Nephrol. 2020 Nov;16(11):669-685
pubmed: 32848206
Nat Mach Intell. 2019 Feb;1(2):112-119
pubmed: 31187088
Int J Med Inform. 2020 Sep;141:104231
pubmed: 32682317
JAMA Netw Open. 2021 Jan 4;4(1):e2030939
pubmed: 33471115
Transplantation. 2018 Nov;102(11):1795-1814
pubmed: 30028786
Hum Pathol. 2016 Jan;47(1):115-20
pubmed: 26547252
Kidney Int Rep. 2018 Jan 11;3(2):464-475
pubmed: 29725651
Artif Intell Med. 2020 Mar;103:101808
pubmed: 32143802
JCI Insight. 2021 Apr 8;6(7):
pubmed: 33705360
Semin Nephrol. 2016 Jul;36(4):319-30
pubmed: 27475662
J Am Soc Nephrol. 2021 Jan;32(1):52-68
pubmed: 33154175
Am J Pathol. 2019 Sep;189(9):1786-1796
pubmed: 31220455
J Am Soc Nephrol. 2019 Oct;30(10):1968-1979
pubmed: 31488607
Proc SPIE Int Soc Opt Eng. 2021 Feb;11603:
pubmed: 34366543
Kidney Int. 2021 Jan;99(1):86-101
pubmed: 32835732
J Am Soc Nephrol. 2021 Nov;32(11):2795-2813
pubmed: 34479966
Clin J Am Soc Nephrol. 2020 Oct 7;15(10):1445-1454
pubmed: 32938617
Lab Invest. 2021 Aug;101(8):970-982
pubmed: 34006891
Kidney Int. 2018 Apr;93(4):789-796
pubmed: 29459092
Lancet Digit Health. 2022 Jan;4(1):e18-e26
pubmed: 34794930
Clin Exp Nephrol. 2018 Jun;22(3):570-582
pubmed: 29080120
Kidney Int. 2022 Feb;101(2):288-298
pubmed: 34757124
Am J Pathol. 2021 Aug;191(8):1442-1453
pubmed: 34033750
J Am Soc Nephrol. 2018 Aug;29(8):2081-2088
pubmed: 29921718
Lancet. 2020 Feb 29;395(10225):709-733
pubmed: 32061315
Kidney Int Rep. 2021 Jun 24;6(9):2445-2454
pubmed: 34514205
Clin Nephrol. 2019 Jun;91(6):363-369
pubmed: 30848240
J Am Soc Nephrol. 2019 Oct;30(10):1953-1967
pubmed: 31488606
Kidney Int Rep. 2019 Apr 15;4(7):955-962
pubmed: 31317118
Comput Methods Programs Biomed. 2020 Feb;184:105273
pubmed: 31891905

Auteurs

Satoshi Hara (S)

Medical Education Research Center, Graduate School of Medical Sciences, Kanazawa University, Kanazawa, Japan.
Department of Rheumatology, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.

Emi Haneda (E)

School of Electrical Information Communication Engineering, College of Science and Engineering, Kanazawa University, Kanazawa, Japan.

Masaki Kawakami (M)

School of Electrical Information Communication Engineering, College of Science and Engineering, Kanazawa University, Kanazawa, Japan.

Kento Morita (K)

School of Electrical Information Communication Engineering, College of Science and Engineering, Kanazawa University, Kanazawa, Japan.

Ryo Nishioka (R)

Department of Rheumatology, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.

Takeshi Zoshima (T)

Department of Rheumatology, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.

Mitsuhiro Kometani (M)

Department of Endocrinology and Metabolism, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.

Takashi Yoneda (T)

Department of Endocrinology and Metabolism, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.
Department of Health Promotion and Medicine of the Future, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.
Faculty of Transdisciplinary Sciences, Institute of Transdisciplinary Sciences, Kanazawa University, Kanazawa, Japan.

Mitsuhiro Kawano (M)

Department of Rheumatology, Kanazawa University Graduate School of Medicine, Kanazawa, Japan.

Shigehiro Karashima (S)

Institute of Liberal Arts and Science, Kanazawa University, Kanazawa, Japan.

Hidetaka Nambo (H)

School of Electrical Information Communication Engineering, College of Science and Engineering, Kanazawa University, Kanazawa, Japan.

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