新しいAIモデル、リンパ管がん症例の90%を検出(New AI model detects ninety percent of lymphatic cancer cases)

ad

2024-03-14 チャルマース工科大学

医用画像の解釈にAIを活用した新しい方法が開発され、放射線科医の負担を軽減し、迅速な診察や診断の補助が可能になる。ハーグストローム博士はリンパ系がんを追跡する大規模な研究に取り組み、AIモデルの開発や訓練に数年を費やした。このモデルはPETスキャンやCTスキャンから画像を分析し、リンパ節がんの有無を判断する。現在は、他の研究者による続行が可能であり、臨床実践での使用に向けた検証作業が進行中である。

<関連情報>

リンパ腫患者における[18F]フルオロデオキシグルコース-PET-CT分類のためのディープラーニング:2施設レトロスペクティブ解析 Deep learning for [18F]fluorodeoxyglucose-PET-CT classification in patients with lymphoma: a dual-centre retrospective analysis

Ida Häggström, PhD;Doris Leithner, MD;Jennifer Alvén, PhD;Gabriele Campanella, PhD;Murad Abusamra, MD;Honglei Zhang, MD;et al.
The Lancet Digital Health  Published:December 21, 2023
DOI:https://doi.org/10.1016/S2589-7500(23)00203-0

Figure thumbnail gr1a

Summary

Background
The rising global cancer burden has led to an increasing demand for imaging tests such as [18F]fluorodeoxyglucose ([18F]FDG)-PET-CT. To aid imaging specialists in dealing with high scan volumes, we aimed to train a deep learning artificial intelligence algorithm to classify [18F]FDG-PET-CT scans of patients with lymphoma with or without hypermetabolic tumour sites.

Methods
In this retrospective analysis we collected 16 583 [18F]FDG-PET-CTs of 5072 patients with lymphoma who had undergone PET-CT before or after treatment at the Memorial Sloa Kettering Cancer Center, New York, NY, USA. Using maximum intensity projection (MIP), three dimensional (3D) PET, and 3D CT data, our ResNet34-based deep learning model (Lymphoma Artificial Reader System [LARS]) for [18F]FDG-PET-CT binary classification (Deauville 1–3 vs 4–5), was trained on 80% of the dataset, and tested on 20% of this dataset. For external testing, 1000 [18F]FDG-PET-CTs were obtained from a second centre (Medical University of Vienna, Vienna, Austria). Seven model variants were evaluated, including MIP-based LARS-avg (optimised for accuracy) and LARS-max (optimised for sensitivity), and 3D PET-CT-based LARS-ptct. Following expert curation, areas under the curve (AUCs), accuracies, sensitivities, and specificities were calculated.

Findings
In the internal test cohort (3325 PET-CTs, 1012 patients), LARS-avg achieved an AUC of 0·949 (95% CI 0·942–0·956), accuracy of 0·890 (0·879–0·901), sensitivity of 0·868 (0·851–0·885), and specificity of 0·913 (0·899–0·925); LARS-max achieved an AUC of 0·949 (0·942–0·956), accuracy of 0·868 (0·858–0·879), sensitivity of 0·909 (0·896–0·924), and specificity of 0·826 (0·808–0·843); and LARS-ptct achieved an AUC of 0·939 (0·930–0·948), accuracy of 0·875 (0·864–0·887), sensitivity of 0·836 (0·817–0·855), and specificity of 0·915 (0·901–0·927). In the external test cohort (1000 PET-CTs, 503 patients), LARS-avg achieved an AUC of 0·953 (0·938–0·966), accuracy of 0·907 (0·888–0·925), sensitivity of 0·874 (0·843–0·904), and specificity of 0·949 (0·921–0·960); LARS-max achieved an AUC of 0·952 (0·937–0·965), accuracy of 0·898 (0·878–0·916), sensitivity of 0·899 (0·871–0·926), and specificity of 0·897 (0·871–0·922); and LARS-ptct achieved an AUC of 0·932 (0·915–0·948), accuracy of 0·870 (0·850–0·891), sensitivity of 0·827 (0·793–0·863), and specificity of 0·913 (0·889–0·937).

Interpretation
Deep learning accurately distinguishes between [18F]FDG-PET-CT scans of lymphoma patients with and without hypermetabolic tumour sites. Deep learning might therefore be potentially useful to rule out the presence of metabolically active disease in such patients, or serve as a second reader or decision support tool.

Funding
National Institutes of Health-National Cancer Institute Cancer Center Support Grant.

ad
医療・健康
ad
ad


Follow
ad
タイトルとURLをコピーしました