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Machine-Learning-Based Classification Model to Address Diagnostic Challenges in Transbronchial Lung Biopsy.
Sano, Hisao; Okoshi, Ethan N; Tachibana, Yuri; Tanaka, Tomonori; Lami, Kris; Uegami, Wataru; Ohta, Yoshio; Brcic, Luka; Bychkov, Andrey; Fukuoka, Junya.
Affiliation
  • Sano H; Department of Pathology Informatics, Nagasaki University Graduate School of Biomedical Sciences, Nagasaki 852-8588, Nagasaki, Japan.
  • Okoshi EN; Department of Diagnostic Pathology, Izumi City General Hospital, Izumi 594-0073, Osaka, Japan.
  • Tachibana Y; Department of Pathology, Kameda Medical Center, Kamogawa 296-8602, Chiba, Japan.
  • Tanaka T; Department of Pathology Informatics, Nagasaki University Graduate School of Biomedical Sciences, Nagasaki 852-8588, Nagasaki, Japan.
  • Lami K; Department of Pathology Informatics, Nagasaki University Graduate School of Biomedical Sciences, Nagasaki 852-8588, Nagasaki, Japan.
  • Uegami W; Department of Pathology, Kameda Medical Center, Kamogawa 296-8602, Chiba, Japan.
  • Ohta Y; Department of Diagnostic Pathology, Izumi City General Hospital, Izumi 594-0073, Osaka, Japan.
  • Brcic L; Department of Pathology, Kobe University Graduate School of Medicine, Kobe 650-0017, Hyogo, Japan.
  • Bychkov A; Department of Pathology Informatics, Nagasaki University Graduate School of Biomedical Sciences, Nagasaki 852-8588, Nagasaki, Japan.
  • Fukuoka J; Department of Pathology, Kameda Medical Center, Kamogawa 296-8602, Chiba, Japan.
Cancers (Basel) ; 16(4)2024 Feb 09.
Article in En | MEDLINE | ID: mdl-38398122
ABSTRACT

BACKGROUND:

When obtaining specimens from pulmonary nodules in TBLB, distinguishing between benign samples and mis-sampling from a tumor presents a challenge. Our objective is to develop a machine-learning-based classifier for TBLB specimens.

METHODS:

Three pathologists assessed six pathological findings, including interface bronchitis/bronchiolitis (IB/B), plasma cell infiltration (PLC), eosinophil infiltration (Eo), lymphoid aggregation (Ly), fibroelastosis (FE), and organizing pneumonia (OP), as potential histologic markers to distinguish between benign and malignant conditions. A total of 251 TBLB cases with defined benign and malignant outcomes based on clinical follow-up were collected and a gradient-boosted decision-tree-based machine learning model (XGBoost) was trained and tested on randomly split training and test sets.

RESULTS:

Five pathological changes showed independent, mild-to-moderate associations (AUC ranging from 0.58 to 0.75) with benign conditions, with IB/B being the strongest predictor. On the other hand, FE emerged to be the sole indicator of malignant conditions with a mild association (AUC = 0.66). Our model was trained on 200 cases and tested on 51 cases, achieving an AUC of 0.78 for the binary classification of benign vs. malignant on the test set.

CONCLUSION:

The machine-learning model developed has the potential to distinguish between benign and malignant conditions in TBLB samples excluding the presence or absence of tumor cells, thereby improving diagnostic accuracy and reducing the burden of repeated sampling procedures for patients.
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Cancers (Basel) Year: 2024 Document type: Article Affiliation country: Country of publication:

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: Cancers (Basel) Year: 2024 Document type: Article Affiliation country: Country of publication: