Abstract 75P
Background
A parallel deep learning network framework for whole-body bone scan image analysis Whole-body bone scan image analysis in nuclear medicine is a common method assisting physicians in bone metastases detection of cancer. As the increasing need for diagnostic examinations in the huge and elderly population in China, physicians are facing a significant growth of workload but must still manage to read the diagnostic images carefully and avoid errors in interpretation. It is crucial to develop a clinical decision support tool in assisting physicians in their clinical routine.
Methods
In this study, we proposed a parallel deep learning network framework for bone-scan interpretations of the presence or absence of bone metastases. The whole-body bone scans (anterior and posterior views) of 707 patients who are suspected bone metastatic disease were studied. The physicians were asked to classify each case for the presence or absence of bone metastasis manually. Each bone scan image was automatically segmented into 26 different anatomical regions of homogeneous bones based on the skeletal frame. The corresponding 26 deep learning networks made a diagnosis by inspecting each region and searching for abnormal lesion activity simultaneously. To estimate the performance of each anatomical sub-region identification models, a ten-fold cross testing scheme was applied where the data set was divided into ten parts of equal size randomly.
Results
The sensitivity, specificity and the mean number of false lesions detected were adopted as performance indices to evaluate the proposed model. The best sensitivity and specificity of an individual network corresponding to each sub-region are 99.9 % and 97.3% respectively. The overall mean sensitivity and specificity of the parallel model are 99.2% and 71.8% respectively, as well as 2.0 false detections per patient scan image within millisecond.
Conclusions
With an extremely high sensitivity, specificity and a low false lesions detection rate, this proposed parallel deep learning network model is demonstrated as useful for detecting metastases in bone scans. Our proposed framework appears to have significant potential as a clinical decision support tool in assisting physicians in their clinical routine.
Clinical trial identification
Editorial acknowledgement
Legal entity responsible for the study
The authors.
Funding
Has not received any funding.
Disclosure
X. Pu: Full / Part-time employment: University of Electronic Science and Technology of China; Full / Part-time employment: University of Electronic Science and Technology of China; Full / Part-time employment: University of Electronic Science and Technology of China. G. Tang: Full / Part-time employment: West China University Hospital, Sichuan University. K. Cai: Research grant / Funding (institution): School of Computer Science and Engineering, University of Electronic Science and Technology of China. Y. Huang: Research grant / Funding (institution): College of Computer Science, Sichuan University. M. Ping: Research grant / Funding (institution): School of Computer Science and Engineering, University of Electronic Science and Technology of China. Z. Peng: Research grant / Funding (institution): Big Data Research Center, University of Electronic Science and Technology of China. H. Qiu: Full / Part-time employment: School of Computer Science and Engineering, University of Electronic Science and Technology of China.
Resources from the same session
9P - XRCC1 Arg194Trp, Palb2 T1100T (3300T>G), HMMR V353A, TNF aG308A polymorphisms as diagnostic and prognostic markers of breast cancer in the Kyrgyz ethnic group
Presenter: Aigul Semetei kyzy
Session: Poster display session
Resources:
Abstract
232P - Early Results from the Phase I Study of SY-1365, a Potent and Selective CDK7 inhibitor, in Patients with Ovarian Cancer and Advanced Solid Tumors
Presenter: Debra Richardson
Session: Poster display session
Resources:
Abstract
382P - Drug metabolizing enzymes pharmacogenomic: Biomarkers for improved chemotherapy in head and neck cancer squamous cell carcinoma
Presenter: Sunishtha Bhatia
Session: Poster display session
Resources:
Abstract
401P - Women in oncology: Alarming figures from India
Presenter: Sharada Mailankody
Session: Poster display session
Resources:
Abstract
416P - Multidisciplinary management of sarcomas of the head and neck: An institutional experience
Presenter: Kavitha Jain
Session: Poster display session
Resources:
Abstract
523P - Co-morbilities and survival of patients initially diagnosed with extensive-stage small cell lung cancer: Impact of hypertension, diabetes and chronic hepatitis B viral infection
Presenter: Weigang Xiu
Session: Poster display session
Resources:
Abstract
529P - Osimertinib for patients with EGFR-mutant advanced NSCLC and asymptomatic brain metastases: An open-label, two-arm, phase II study
Presenter: Roni Gillis
Session: Poster display session
Resources:
Abstract