# AI-assisted differentiation of nontuberculous mycobacterial pulmonary disease from colonization: a multi-center study

**Authors:** Chia-Jung Liu, Yueh-Chun Liu, Yu-Hsuan Chen, Yu-Sen Huang, Po-Chih Kuo, Meng-Rui Lee, Lu-Cheng Kuo, Jann-Yuan Wang, Chao-Chi Ho, Jin-Yuan Shih, Chong-Jen Yu

PMC · DOI: 10.1186/s13244-025-02131-1 · Insights into Imaging · 2025-11-09

## TL;DR

A deep learning model called NTMNet was developed to help doctors distinguish between NTM pulmonary disease and colonization using chest CT scans and clinical data, achieving accuracy comparable to expert pulmonologists.

## Contribution

NTMNet is a novel multimodal deep learning model that combines chest CT imaging and clinical data to accurately classify NTM disease status.

## Key findings

- NTMNet achieved an AUC of 0.85 in internal tests and 0.82 in external tests when combining CT imaging and clinical data.
- The model's performance was comparable to that of three experienced pulmonologists in determining NTM disease status.
- The model shows potential as a diagnostic tool for NTM disease in clinical settings.

## Abstract

Differentiating between nontuberculous mycobacteria (NTM) pulmonary disease (NTM-PD) and colonization (NTM-PC) is clinically important but difficult. It remains unknown whether artificial intelligence utilizing clinical data and chest CT images could address this clinical problem.

Patients were retrospectively recruited with NTM isolation from respiratory specimens in two hospitals. Their disease or colonization status was determined by three NTM experts. We developed a multimodal deep learning model named NTMNet, which integrates chest CT scans and clinical data (including age, sex, acid-fast smear [AFS] results, and mycobacterial species) to predict NTM disease status. The performance of NTMNet was evaluated on both internal and external test sets.

A total of 324 NTM-PC patients and 285 NTM-PD patients were included. Among the internal and external test sets, the area under the receiver operating characteristic curve (AUC) for predicting NTM disease status using CT imaging was 0.73 (95% CI: 0.62–0.82) and 0.78 (95% CI: 0.75–0.83), respectively. When imaging data were integrated with clinical information, our NTMNet model achieved AUC values of 0.85 (95% CI: 0.80–0.93) and 0.82 (95% CI: 0.78–0.89), respectively. Furthermore, our NTMNet model demonstrated comparable accuracy to that of three experienced pulmonologists in determining NTM disease status in the reader study.

Our multimodal NTMNet exhibited satisfactory performance in distinguishing disease status among patients with respiratory NTM isolates. This deep learning-based model has the potential to assist physicians in clinical management, achieving diagnostic accuracy comparable to that of pulmonologists.

A deep learning model leveraging chest computed tomography images and clinical data effectively differentiated NTM disease status, achieving a classification accuracy comparable to that of pulmonologists and demonstrating its potential to support accurate NTM diagnosis in clinical settings.

Accurately distinguishing nontuberculous mycobacteria (NTM) disease status is clinically important but challenging.The NTMNet model effectively differentiated the NTM disease status and matched the performance of the pulmonologists.The NTMNet model could be a potential diagnostic tool for patients with respiratory NTM isolates.

Accurately distinguishing nontuberculous mycobacteria (NTM) disease status is clinically important but challenging.

The NTMNet model effectively differentiated the NTM disease status and matched the performance of the pulmonologists.

The NTMNet model could be a potential diagnostic tool for patients with respiratory NTM isolates.

## Full-text entities

- **Diseases:** nontuberculous mycobacteria (NTM) pulmonary disease (MESH:D008171), colonization (MESH:D003108), NTM disease (MESH:D009165), NTM-PC (MESH:D015324), NTM-PD (MESH:D010300)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

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## References

1 references — full list in the complete paper: https://tomesphere.com/paper/PMC12597856/full.md

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Source: https://tomesphere.com/paper/PMC12597856