| Literature DB >> 35692757 |
Shuai Ye1, Yu Han2, XiMin Pan1, KeXin Niu1, YuTing Liao3, XiaoChun Meng1.
Abstract
Predicting the prognosis of patients in advance is conducive to providing personalized treatment for patients. Our aim was to predict the therapeutic efficacy and progression free survival (PFS) of patients with liver metastasis of colorectal cancer according to the changes of computed tomography (CT) radiomics before and after chemotherapy.Entities:
Keywords: chemotherapy; colorectal liver metastases; computed tomography; progression-free survival; radiomics
Year: 2022 PMID: 35692757 PMCID: PMC9184515 DOI: 10.3389/fonc.2022.843991
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 5.738
Figure 1Radiomics framework of predicting the PFS of patients with colorectal liver metastases undergo neoadjuvant chemotherapy. PFS, progress-free survival.
Clinical characteristics of patients.
| Characteristics | Patients (N = 139) |
|---|---|
| 56.96 ± 11.06 | |
| Male | 96 (69.06%) |
| Female | 43 (30.94%) |
| 3 | 85 (61.15%) |
| 4 | 54 (38.85%) |
| 139 (100.00%) | |
| 0 | 6 (4.32%) |
| 1 | 36 (25.90%) |
| 2 | 97 (69.78%) |
| No | 93 (66.91%) |
| Yes | 46 (33.09%) |
| No | 78 (56.12%) |
| Yes | 61 (43.88%) |
| 1 | 43 (30.94%) |
| 2 | 22 (15.83%) |
| 3 | 22 (15.83%) |
| 4 | 15 (10.79%) |
| 5 | 37 (26.62%) |
| 11.80 ± 7.93 |
Figure 2The coefficients of each feature based on PreRad model.
PFS prediction performance of various models.
| Models | Training cohort C-index (95 CI %) | Testing cohort C-index (95 CI %) |
|---|---|---|
| Clinical | 0.661 (0.600-0.721) | 0.673 (0.583-0.763) |
| PreRad | 0.669 (0.626-0.712) | 0.614 (0.552-0.675) |
| PostRad | 0.757 (0.721-0.793) | 0.642 (0.578-0.707) |
| DeltaRad | 0.800 (0.771-0.829) | 0.688 (0.627-0.749) |
| CombPreRad | 0.701 (0.662-0.740) | 0.696 (0.638-0.754) |
| CombPostRad | 0.763 (0.728-0.798) | 0.694 (0.633-0.755) |
| CombDeltaRad | 0.802 (0.772-0.832) | 0.744 (0.686-0.803) |
1-year PFS prediction performance of various models.
| Models | cohort | AUC (95% CI) | ACC (95% CI) | Sensitivity (95% CI) | Specificity (95% CI) |
|---|---|---|---|---|---|
| Clinical | training | 0.689 (0.626-0.753) | 0.622 (0.621-0.624) | 0.745 (0.657-0.833) | 0.560 (0.488-0.632) |
| testing | 0.708 (0.610-0.805) | 0.664 (0.660-0.668) | 0.711 (0.566-0.855) | 0.642 (0.538-0.746) | |
| PreRad | training | 0.725 (0.663-0.787) | 0.673 (0.671-0.674) | 0.638 (0.541-0.735) | 0.690 (0.623-0.757) |
| testing | 0.526 (0.414-0.638) | 0.395 (0.391-0.399) | 0.974 (0.923-1.025) | 0.123 (0.052-0.195) | |
| PostRad | training | 0.804 (0.751-0.856) | 0.709 (0.707-0.710) | 0.734 (0.645-0.823) | 0.696 (0.629-0.762) |
| testing | 0.632 (0.524-0.740) | 0.681 (0.677-0.684) | 0.421 (0.264-0.578) | 0.802 (0.716-0.889) | |
| DeltaRad | training | 0.852 (0.807-0.897) | 0.759 (0.758-0.760) | 0.840 (0.766-0.914) | 0.717 (0.652-0.782) |
| testing | 0.707 (0.608-0.806) | 0.664 (0.660-0.668) | 0.789 (0.660-0.919) | 0.605 (0.498-0.711) | |
| CombPreRad | training | 0.777 (0.721-0.832) | 0.741 (0.740-0.742) | 0.564 (0.464-0.664) | 0.832 (0.777-0.886) |
| testing | 0.671 (0.564-0.778) | 0.697 (0.694-0.701) | 0.632 (0.478-0.785) | 0.728 (0.632-0.825) | |
| CombPostRad | training | 0.840 (0.791-0.888) | 0.773 (0.772-0.775) | 0.745 (0.657-0.833) | 0.788 (0.729-0.847) |
| testing | 0.720 (0.618-0.823) | 0.773 (0.770-0.776) | 0.500 (0.341-0.659) | 0.901 (0.836-0.966) | |
| CombDeltaRad | training | 0.871 (0.828-0.914) | 0.809 (0.808-0.810) | 0.745 (0.657-0.833) | 0.842 (0.790-0.895) |
| testing | 0.745 (0.651-0.838) | 0.639 (0.635-0.642) | 0.842 (0.726-0.958) | 0.543 (0.435-0.652) |
Figure 3ROCs for 1-year PFS probability prediction of various Models. (A) train cohort, (B) test cohort.
Figure 4Kaplan-Meier analysis of PFS based on CombDeltaRad model. (A) train cohort, (B) test cohort.
Figure 5The nomogram for PFS probability prediction based on CombDeltaRad model.