| Literature DB >> 35756658 |
Zsombor Ritter1, László Papp2, Katalin Zámbó1, Zoltán Tóth3, Dániel Dezső1, Dániel Sándor Veres4, Domokos Máthé4,5, Ferenc Budán6,7, Éva Karádi8, Anett Balikó9, László Pajor10, Árpád Szomor11, Erzsébet Schmidt1, Hussain Alizadeh11.
Abstract
Purpose: For the identification of high-risk patients in diffuse large B-cell lymphoma (DLBCL), we investigated the prognostic significance of in vivo radiomics derived from baseline [18F]FDG PET/CT and clinical parameters.Entities:
Keywords: DLBCL; [18F]FDG PET/CT; automated machine learning; radiomics; tumor imaging
Year: 2022 PMID: 35756658 PMCID: PMC9216187 DOI: 10.3389/fonc.2022.820136
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 5.738
Comparison of patients regarding to the two clinical centers where the FDG PET/CT examinations were performed.
| Variables | Center 1(Pécs) | Center 2 (Kaposvár) | |
|---|---|---|---|
| ( | ( | ||
| 0.487 | |||
| No Progression or Remission ( | 25 (29.4%) | 30 (35.3%) | |
| Progression within 24 months ( | 16 (18.8%) | 14 (16.5%) | |
| 0.877 | |||
| 1 ( | 6 (7%) | 4 (4.7%) | |
| 2 ( | 11 (12.9%) | 11 (12.9%) | |
| 3 ( | 10 (11.8%) | 7 (8.2%) | |
| 4 ( | 14 (16.5%) | 22 (25.9%) | |
| 0.988 | |||
| 0 ( | 4 (4.7%) | 4 (4.7%) | |
| 1 ( | 18 (21.2%) | 20 (23.5%) | |
| 2 ( | 19 (22.6%) | 20 (23.5%) | |
| 0.654 | |||
| GC ( | 18 (22%) | 16 (19.5%) | |
| N-GC ( | 23 (28%) | 25 (30.5%) | |
Figure 1Comparison of clinical outcomes based on maximum intensity projection (MIP) images in three patients (A–C). By each patient, the first image shows primary staging, the second shows interim PET scan, and the third shows post-treatment restaging scan. The red arrows indicate FDG avid lymphoma foci. (A) Patient in complete remission to treatment. The increased FDG uptake in all three images was a sign of thyroiditis. (B) Patient without complete remission during and after the therapy. The interim scan showed Deauville score 4. (C) Patient had an interim scan with Deauville score 3 but relapsed after the treatment.
Comparison of clinical outcome of the patients and their clinical data.
| Variables | No Progression or Remission | Progression within 24 months | |
|---|---|---|---|
| 0.611 | |||
| Male ( | 28 (32.9%) | 17 (20%) | |
| Female ( | 27 (31.8%) | 13 (15.3%) | |
| 0.113 | |||
| 0 ( | 16 (19.3%) | 6 (7.2%) | |
| 1 ( | 26 (31.3%) | 8 (9.6%) | |
| 2 ( | 11 (13.3%) | 12 (14.5%) | |
| 3 ( | 2 (2.4%) | 2 (2.4%) | |
| 0.017 | |||
| 1 ( | 10 (11.8%) | 0 | |
| 2 ( | 17 (20%) | 5 (5.9%) | |
| 3 ( | 9 (10.6%) | 8 (9.4%) | |
| 4 ( | 19 (22.6%) | 17 (20%) | |
| 0.015 | |||
| 0 ( | 7 (8.2%) | 1 (1.2%) | |
| 1 ( | 29 (34.1%) | 9 (10.6%) | |
| 2 ( | 19 (22.6%) | 20 (23.5%) | |
| 0.018 | |||
| GC ( | 27 (32.9%) | 7 (8.5%) | |
| N-GC ( | 26 (31.7%) | 22 (26.8%) |
Chi-square test was performed in order to find the association between the outcome and the specified clinical status of the patients suffering from DLBCL.
Figure 2The violin plot (R: A Language and Environment for Statistical Computing, version 4.04., using package ggplot2, version 3.3.3) shows the values of the prominent features to predict 2-year event-free survival.
Figure 3Receiver operator characteristic (ROC) curve of the independent validation performance of the machine learning model trained over Center 1 cases to predict 2-year event-free survival over Center 2 cases with an area under the ROC (AUC) of 0.85.
Figure 4Kaplan–Meier curve of the machine learning (ML) model prediction vs. 2-year event-free survival in Center 2 cases. The ML model was trained with Center 1 cases.