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SLIC-supervoxels-based response evaluation of osteosarcoma treated with neoadjuvant chemotherapy using multi-parametric MR imaging
by
Sharma, Raju
, Kandasamy Devasenathipathy
, Baidya Kayal Esha
, Sharma, Mehar C
, Bakhshi Sameer
, Mehndiratta Amit
in
Biomedical materials
/ Bone cancer
/ Chemotherapy
/ Clustering
/ Edema
/ Evaluation
/ Image segmentation
/ Magnetic resonance imaging
/ Medical imaging
/ Necrosis
/ Osteosarcoma
/ Patients
/ Sarcoma
/ Surgery
/ Tumors
2020
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SLIC-supervoxels-based response evaluation of osteosarcoma treated with neoadjuvant chemotherapy using multi-parametric MR imaging
by
Sharma, Raju
, Kandasamy Devasenathipathy
, Baidya Kayal Esha
, Sharma, Mehar C
, Bakhshi Sameer
, Mehndiratta Amit
in
Biomedical materials
/ Bone cancer
/ Chemotherapy
/ Clustering
/ Edema
/ Evaluation
/ Image segmentation
/ Magnetic resonance imaging
/ Medical imaging
/ Necrosis
/ Osteosarcoma
/ Patients
/ Sarcoma
/ Surgery
/ Tumors
2020
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
SLIC-supervoxels-based response evaluation of osteosarcoma treated with neoadjuvant chemotherapy using multi-parametric MR imaging
by
Sharma, Raju
, Kandasamy Devasenathipathy
, Baidya Kayal Esha
, Sharma, Mehar C
, Bakhshi Sameer
, Mehndiratta Amit
in
Biomedical materials
/ Bone cancer
/ Chemotherapy
/ Clustering
/ Edema
/ Evaluation
/ Image segmentation
/ Magnetic resonance imaging
/ Medical imaging
/ Necrosis
/ Osteosarcoma
/ Patients
/ Sarcoma
/ Surgery
/ Tumors
2020
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SLIC-supervoxels-based response evaluation of osteosarcoma treated with neoadjuvant chemotherapy using multi-parametric MR imaging
Journal Article
SLIC-supervoxels-based response evaluation of osteosarcoma treated with neoadjuvant chemotherapy using multi-parametric MR imaging
2020
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Overview
ObjectiveHistopathological examination (HPE) is the current gold standard for assessing chemotherapy response to tumor, but it is possible only after surgery. The purpose of the study was to develop a noninvasive, imaging-based robust method to delineate, visualize, and quantify the proportions of necrosis and viable tissue present within the tumor along with peritumoral edema before and after neoadjuvant chemotherapy (NACT) and to evaluate treatment response with correlation to HPE necrosis after surgery.MethodsThe MRI dataset of 30 patients (N = 30; male:female = 24:6; age = 17.6 ± 2.7 years) with osteosarcoma was acquired using 1.5 T Philips Achieva MRI scanner before (baseline) and after 3 cycles of NACT (follow-up). After NACT, all patients underwent surgical resection followed by HPE. Simple linear iterative clustering supervoxels and Otsu multithresholding were combined to develop the proposed method—SLICs+MTh—to subsegment and quantify viable and nonviable regions within tumor using multiparametric MRI. Manually drawn ground-truth ROIs and SLICs+MTh-based segmentation of tumor, edema, and necrosis were compared using Jacquard index (JI), Dice coefficient (DC), precision (P), and recall (R). Postcontrast T1W images (PC-T1W) were used to validate the SLICs+MTh-based necrosis. SLICs+MTh-based necrosis volume at follow-up was compared with HPE necrosis using paired t test (p ≤ 0.05).ResultsActive tumor, necrosis, and edema were segmented with moderate to satisfactory accuracy (JI = 62–78%; DC = 72–87%; P = 67–87%; R = 63–88%). Qualitatively and quantitatively (DC = 74 ± 9%), the SLICs+MTh-based necrosis area correlated well with the hypointense necrosis areas in PC-T1W. No significant difference (paired t test, p = 0.26; Bland–Altman plot, bias = 2.47) between SLICs+MTh-based necrosis at follow-up and HPE necrosis was observed.ConclusionThe proposed multiparametric MRI-based SLICs+MTh method performs noninvasive assessment of NACT response in osteosarcoma that may improve cancer treatment monitoring, planning, and overall prognosis.Key Points• The simple linear iterative clustering supervoxels and Otsu multithresholding-based technique (SLICs+MTh) successfully estimates the proportion of necrosis, viable tumor, and edema in osteosarcoma in the course of chemotherapy.• The proposed technique is noninvasive and uses multiparametric MRI to measure necrosis as an indication of anticancer treatment response.• SLICs+MTh-based necrosis was in satisfactory agreement with histological necrosis after surgery.
Publisher
Springer Nature B.V
Subject
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