Artificial intelligence applications for pediatric oncology imaging

被引:0
作者
Heike Daldrup-Link
机构
[1] Stanford University School of Medicine,Department of Radiology, Lucile Packard Children’s Hospital, Pediatric Molecular Imaging Program
[2] Stanford University School of Medicine,Department of Pediatrics, Hematology/Oncology Section
来源
Pediatric Radiology | 2019年 / 49卷
关键词
Artificial intelligence; Cancer; Children; Imaging; Machine learning; Oncology;
D O I
暂无
中图分类号
学科分类号
摘要
Machine learning algorithms can help to improve the accuracy and efficiency of cancer diagnosis, selection of personalized therapies and prediction of long-term outcomes. Artificial intelligence (AI) describes a subset of machine learning that can identify patterns in data and take actions to reach pre-set goals without specific programming. Machine learning tools can help to identify high-risk populations, prescribe personalized screening tests and enrich patient populations that are most likely to benefit from advanced imaging tests. AI algorithms can also help to plan personalized therapies and predict the impact of genomic variations on the sensitivity of normal and tumor tissue to chemotherapy or radiation therapy. The two main bottlenecks for successful AI applications in pediatric oncology imaging to date are the needs for large data sets and appropriate computer and memory power. With appropriate data entry and processing power, deep convolutional neural networks (CNNs) can process large amounts of imaging data, clinical data and medical literature in very short periods of time and thereby accelerate literature reviews, correct diagnoses and personalized treatments. This article provides a focused review of emerging AI applications that are relevant for the pediatric oncology imaging community.
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页码:1384 / 1390
页数:6
相关论文
共 136 条
  • [1] Callaway E(2017)2017 in news: the science events that shaped the year Nature 552 304-307
  • [2] Castelvecchi D(2018)Radiomics in paediatric neuro-oncology: a multicentre study on MRI texture analysis NMR Biomed 31 1-13
  • [3] Cyranoski D(2018)Transfer learning on fused multiparametric MR images for classifying histopathological subtypes of rhabdomyosarcoma Comput Med Imaging Graph 65 167-175
  • [4] Fetit AE(2018)Segmentation of brain tumor on magnetic resonance images using 3D full-convolutional densely connected convolutional networks Nan Fang Yi Ke Da Xue Xue Bao 38 661-668
  • [5] Novak J(2017)Machine learning for medical imaging Radiographics 37 505-515
  • [6] Rodriguez D(2018)Machine learning and radiogenomics: lessons learned and future directions Front Oncol 8 228-289
  • [7] Banerjee I(2014)The prenatal origins of cancer Nat Rev Cancer 14 277-3054
  • [8] Crawley A(2014)Assessment of circulating microRNAs in plasma of lung cancer patients Molecules 19 3038-2727
  • [9] Bhethanabotla M(2017)Early colorectal cancer detected by machine learning model using gender, age, and complete blood count data Dig Dis Sci 62 2719-44107
  • [10] Huang YH(2017)Identification of circular RNAs as a promising new class of diagnostic biomarkers for human breast cancer Oncotarget 8 44096-6600