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Radiology Scott Schuetze, MD, PhD University of Michigan 1 Disclosure I am not a radiologist 2 Utility of imaging Before diagnosis During staging During treatment 3 Advanced imaging is overused prior to referral to a musculoskeletal oncologist Drs. Miller, Avedian, Cummings, Balach Universities of Iowa, Arizona, Stanford, Connecticut, & Virginia Mason (Seattle) 4 What should the generalist or primary provider know? What is appropriate imaging to evaluate complaint? Pain Mass Imaging for bone vs soft tissue lesion? What information is necessary for the specialist to accept the referral? 5 Study strengths Geographic diversity – NW, NE, California, South-west, Mid-west, Tx Inclusion of 8 centers Prospective consecutive case selection Relatively large number of cases Pre-defined criteria for imaging utility Statistical analysis 6 Study limitations U.S. perspective Pre-defined criteria may be subjective Results for bone & soft tissue combined Sequencing of imaging not detailed Imaging may be driven local radiologists interpreting radiographs and/or MRI & recommending additional studies 7 Study findings MRI useful in majority of soft tissue tumors, unnecessary in bone lesions Geographic differences in CT frequency (highest in TX, OK, SC) Bone scanning and US were infrequent PET overused in OK (12%) vs Seattle (0%) Advanced imaging overused in benign bone lesions 8 Lessons learned Orthopaedic surgeons as guilty as primary care CT, bone scans, PET and US are frequently unnecessary for diagnosis Opportunities for regional education? Opportunities for education during training? Target orthopaedic surgeons, primary care and/or radiologists? 9 Pre-referral take-away High quality MRI with contrast for soft tissue mass Plain x-ray for bone lesion Let the specialists sort out the rest 10 Pulmonary micronodules do not impact survival in young patients Drs. Gitelis, Cipriano & Kent Rush Medical College 11 What is the clinical significance of <1 cm lung nodules on CT? Patient demographics – age, occupation, residence, inhalational substance use/abuse Medical history Sarcoma sub-type Nodule number and distribution Slice thickness of scan 12 Which nodules to worry over? 19 yo Ewings 50 yo UPS 35 yo LMS 65 yo liposarc 13 Which nodules to worry over? 19 yo Ewings ? 50 yo UPS Histoplasma 35 yo LMS LMS 65 yo liposarc MALT 14 Study design 96 pt subset of 380 pts Age <50 yrs, bone and soft tissue sarcoma 80% received chemotherapy Overall survival endpoint 4 strata No lung nodules (47%) Single nodule <5 mm (26%) >1 nodule <5 mm (13%) >1 nodule >5 mm (15%) 15 Study results 75% of nodules <5 mm and 100% of nodules >5 mm biopsied were sarcoma Survival worse for patients with nodule >5 mm Figure 1: Influence of Pulmonary Nodules at Presentation on Survival in Sarcoma Patients Under age 50. (N = 96, Mean Follow up 47.2 Months) 1 0.9 80% 76% 68% 0.8 Survival 0.7 0.6 0.5 Group 1: No Nodules n = 45 0.4 Group 2: 1 Nodule < 5mm n = 25 0.3 0.2 Group 3: Any number of Nodules < 5mm n = 37 0.1 Group 4: Any number of Nodules > 5mm n = 14 No difference between Groups 1-3 p < 0.05 for Groups 1-3 compared to Group 4 36% 0 0 10 20 30 40 50 60 70 80 90 100 110 Time from Diagnosis (months) 16 Related studies 71 sarcoma pts <1cm nodules 426 pts with nodules # of malignant nodules Patient group <5 cm (n=128) >5 - <1 cm (n=118) >1 - <3 cm (n=123) No cancer 13 (32%) 15 (30%) 46 (59%) Cancer 115 (42%) 103 (69%) 77 (84%) Pulmonary nodules resected at VATS: etiology in 426 patients Ginsberg MS, Griff SK, Go BD, et al. Radiology 213:227-82, 1999 Indeterminate Pulmonary Nodules in Patients with Sarcoma Affect Survival Rissing S, Rougraff B, Davis K Clinical Orthopaedics & Related Research 459:118-121, June 2007 51 pts with osteosarcoma Nodule size at 1st CT <5 mm >5 mm benign 15 (60%) 7 (27%) metastasis 10 (40%) 19 (73%) CT of pulmonary metastases from osteosarcoma: the less poor technique Picci P, Vanel D, Briccoli A, et al. 17 Ann Oncol 12:1601-04, 2001 Informal survey results – basis for nodules as metastatic disease Ewing AEWS0031: 1 nodule >1 cm or >1 nodules >0.5 cm EURAMOS-1: 1 nodule >1 cm or >3 nodules >0.5 cm COG ARST: 1 nodule >1 cm French trials: 1 nodule >1 cm Italian trials: 1 nodule >0.5 cm SARC012: the oncologist, radiologist and surgeon should use best judgment 18 Conclusions Metastasis (<5 mm) at diagnosis does not = poor outcome Lung nodules >5 mm should raise suspicion Many lung nodules should raise suspicion Standardize criteria for clinical trials? Treat for cure! 19 Total lesion glycolysis by FDG-PET is of predictive value in soft tissue sarcoma Drs. Choi, Ha, Cho, Kang, Kim, Pang & Han Seoul National University Hospital 20 Potential value of dynamic imaging in sarcoma Prognostic information: natural course of disease Predictive information: disease response to intervention 21 FDG PET semi-quantitative measurements SUVmax: maximum pixel value w/i slice with highest FDG uptake SUVpeak: average pixel value w/i fixed ROI in area with highest FDG uptake SUVave: average pixel value w/i tumor ROI TBR: average value w/i tumor ROI / average value w/i blood pool TLG: SUVave of uptake above minimum threshold x TV MTV: volume of tumor within ROI in which FDG uptake is >40% of SUVmax 22 Challenges in standardization Dynamic versus static measurements FDG administration protocol Hardware calibration Observer dependent ROI Definitions 23 FDG PET and sarcoma prognosis Recurrence-free survival Factor Disease HR 95% CI P value SUVmax >6 STS 3.2 1.3-8.2 0.015 SUVmax >6 EWS 0.47 SUVmax >6 OS 0.41 SUVmax >15 OS 4.5 1.3-15.3 0.015 SUVmax does not account for tumor heterogeneity Do other parameters improve prognostic information? Schuetze S et al. 2005, Cancer 103:339 Hawkins D et al. 2009, Cancer 115:3519 Hawkins D et al. 2005, JCO 23:8828. Costelloe C et al, 2009, J Nuc Med 50:340. 24 Study data 66 pts with STS Retrospective AJCC stage Receiver operating characteristics I: 16% II: 24% III: 46% IV: 14% Adjuvant tx Radiotherapy: 47% Chemotherapy: 29% SUVmax: 6 TLG: 250 MTV: 40 cm3 25 K-M analysis of sarcoma FDG metabolism P<0.001 P=0.022 P=0.031 Choi E-S et al. 2013, Eur J Nucl Med Mol Imaging DOI 10.1007/s00259-013-2511-y 26 Multivariate analysis factors affecting PFS Factor Value Univariate Multivariate P value RR 95% CI P value AJCC stage III or IV 0.035 3.36 1.01-11.02 0.047 Metastases Present <0.001 5.99 1.81-19.8 0.003 TLG 250 0.001 4.79 1.51-15.23 0.008 SUVmax 6 0.031 0.203 MTV 40 cm3 0.022 0.736 27 Multivariate analysis factors affecting PFS Factor Value Univariate Multivariate P value RR 95% CI P value AJCC stage III or IV 0.035 3.36 1.01-11.02 0.047 Metastases Present <0.001 5.99 1.81-19.8 0.003 TLG 250 0.001 4.79 1.51-15.23 0.008 SUVmax 6 0.031 0.203 MTV 40 cm3 0.022 0.736 Is TLG predictive of response to therapy in a uniformly treated high-risk population? 28 FDG PET in sarcoma Potential roles in sarcoma management Prognostic information / risk of relapse Predict response to adjuvant therapy Early marker of response to drug therapy Foundation of single-institutional experience (variability minimized) Need more experience in multi-site trials (more variability) 29 Thanks to the presenters & session chairs 30