| Literature DB >> 36158659 |
Kaili Chen1, Jiashi Cao2,3, Xin Zhang4, Xiang Wang5, Xiangyu Zhao4, Qingchu Li5, Song Chen5, Peng Wang5, Tielong Liu3, Juan Du1, Shiyuan Liu5, Lichi Zhang4.
Abstract
Purpose: Multiple myeloma (MM) and metastasis originated are the two common malignancy diseases in the spine. They usually show similar imaging patterns and are highly demanded to differentiate for precision diagnosis and treatment planning. The objective of this study is therefore to construct a novel deep-learning-based method for effective differentiation of two diseases, with the comparative study of traditional radiomics analysis.Entities:
Keywords: attention guidance strategy; deep learning; lung cancer; multiple myeloma (MM); radiomics; spinal metastases
Year: 2022 PMID: 36158659 PMCID: PMC9495278 DOI: 10.3389/fonc.2022.981769
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 5.738
Figure 1The flowchart of patients’ inclusion and exclusion details.
Figure 2The exemplar spinal image with annotation in the sagittal view (A), and the annotation transfer to the coronal (B) and axial views (C) using affine transformation.
Figure 3The overall framework for the attention-guided multi-view spinal classification method.
Basic clinical information for patients with spinal MM and metastases from lung cancer.
| MM | Metastases | P-value | |
|---|---|---|---|
| Age | 58.57±11.17 | 56.64±12.98 | 0.271 |
| Gender | 0.053 | ||
| Male | 53 (24.4%) | 74 (34.1%) | |
| Female | 26 (12%) | 64 (29.5%) | |
| Anatomic Site | 0.333 | ||
| Cervical vertebrae | 12 (5.5%) | 35 (16.1%) | |
| Thoracic vertebrae | 40 (18.4%) | 61 (28.1%) | |
| Lumbar vertebrae | 21 (9.7%) | 35 (16.1) | |
| Sacrococcygeal vertebrae | 6 (2.8%) | 7 (3.2%) | |
| Tumor Size | 4.03±1.17 | 3.85±1.65 | 0.379 |
MM, Multiple myeloma.
The Comparison of Classification Performance among Different Methods and Configurations on 5-fold Cross-validation.
| Methods | Attention | ACC | AUC | F1-score |
|---|---|---|---|---|
| Attention guided network | ||||
| Sagittal | – | 0.7692 | 0.7546±0.1011 | 0.6696 |
| √ | 0.8061 | 0.7492±0.0671 | 0.6893 | |
| Axial | – | 0.7419 | 0.7020±0.0268 | 0.5760 |
| √ | 0.7739 | 0.7196±0.0441 | 0.6096 | |
| Coronal | – | 0.7466 | 0.6642±0.0808 | 0.5552 |
| √ | 0.7834 | 0.7322±0.1112 | 0.6694 | |
| Multi-view | – | 0.7876 | 0.7661±0.0841 | 0.6685 |
| √ |
|
|
| |
| Radiomics model | ||||
| Sagittal | – | 0.6035 | 0.6438 ± 0.0445 | 0.3474 |
| Axial |
| 0.6221 | 0.6417 ± 0.0651 | 0.3992 |
| Coronal |
| 0.6682 | 0.6587 ± 0.0514 | 0.4616 |
| Multi-View |
| 0.7098 | 0.7616 ± 0.0386 | 0.5363 |
| Radiologist assessment | ||||
| Radiologist 1 |
| 0.6544 | 0.6417 | 0.5562 |
| Radiologist 2 |
| 0.6912 | 0.7085 | 0.6455 |
ACC, accuracy; AUC, the area under the receiver operating characteristic (ROC) curve.
The bold numbers represent the best result for the deep learning model of MAGN.
Figure 4The ROC curves for the five-fold cross validation experiments with the overall performance, radiomics model and radiologist assessment.
Figure 5The exemplar of the spinal image with lesion annotation (A–D) shows the attention maps generated by the classification model without and with the attention guidance.