Generalising from conventional pipelines using deep learning in high-throughput screening workflows

被引:2
|
作者
Garcia Santa Cruz, Beatriz [1 ,2 ]
Slter, Jan [2 ]
Gomez-Giro, Gemma [3 ]
Saraiva, Claudia [3 ]
Sabate-Soler, Sonia [3 ]
Modamio, Jennifer [3 ]
Barmpa, Kyriaki [3 ]
Schwamborn, Jens Christian [3 ]
Hertel, Frank [1 ,2 ]
Jarazo, Javier [3 ,4 ]
Husch, Andreas [2 ,5 ]
机构
[1] Ctr Hosp Luxembourg, Natl Dept Neurosurg, 4 Rue Ernest Barble, L-1210 Luxembourg, Luxembourg
[2] Univ Luxembourg, Intervent Neurosci Grp, Luxembourg Ctr Syst Biomed, 6 Ave Swing, L-4367 Belvaux, Luxembourg
[3] Univ Luxembourg, Dev & Cellular Biol, Luxembourg Ctr Syst Biomed, 6 Ave Swing, L-4367 Belvaux, Luxembourg
[4] OrganoTherapeut SARL, 6A Ave Hauts Fourneaux, L-4365 Esch Sur Alzette, Luxembourg
[5] Univ Luxembourg, Luxembourg Centere Syst Biomed, Syst Control Grp, 6 Ave Swing, L-4367 Belvaux, Luxembourg
关键词
NEURAL-NETWORKS; IMAGE; HUMANS;
D O I
10.1038/s41598-022-15623-7
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
The study of complex diseases relies on large amounts of data to build models toward precision medicine. Such data acquisition is feasible in the context of high-throughput screening, in which the quality of the results relies on the accuracy of the image analysis. Although state-of-the-art solutions for image segmentation employ deep learning approaches, the high cost of manually generating ground truth labels for model training hampers the day-to-day application in experimental laboratories. Alternatively, traditional computer vision-based solutions do not need expensive labels for their implementation. Our work combines both approaches by training a deep learning network using weak training labels automatically generated with conventional computer vision methods. Our network surpasses the conventional segmentation quality by generalising beyond noisy labels, providing a 25% increase of mean intersection over union, and simultaneously reducing the development and inference times. Our solution was embedded into an easy-to-use graphical user interface that allows researchers to assess the predictions and correct potential inaccuracies with minimal human input. To demonstrate the feasibility of training a deep learning solution on a large dataset of noisy labels automatically generated by a conventional pipeline, we compared our solution against the common approach of training a model from a small manually curated dataset by several experts. Our work suggests that humans perform better in context interpretation, such as error assessment, while computers outperform in pixel-by-pixel fine segmentation. Such pipelines are illustrated with a case study on image segmentation for autophagy events. This work aims for better translation of new technologies to real-world settings in microscopy-image analysis.
引用
收藏
页数:14
相关论文
共 50 条
  • [21] High-throughput screening
    不详
    GENETIC ENGINEERING & BIOTECHNOLOGY NEWS, 2007, 27 (20): : 1 - +
  • [22] High-Throughput Screening
    Wildey, Mary Jo
    Haunso, Anders
    Tudor, Matthew
    Webb, Maria
    Connick, Jonathan H.
    ANNUAL REPORTS IN MEDICINAL CHEMISTRY, VOL 50: PLATFORM TECHNOLOGIES IN DRUG DISCOVERY AND VALIDATION, 2017, 50 : 149 - 195
  • [24] High-throughput screening
    Rogers, MV
    DRUG DISCOVERY TODAY, 1997, 2 (07) : 306 - 306
  • [25] High-throughput segmentation of unmyelinated axons by deep learning
    Emanuele Plebani
    Natalia P. Biscola
    Leif A. Havton
    Bartek Rajwa
    Abida Sanjana Shemonti
    Deborah Jaffey
    Terry Powley
    Janet R. Keast
    Kun-Han Lu
    M. Murat Dundar
    Scientific Reports, 12
  • [26] Engineering patient-derived tumors to enable high-throughput screening: Immunooncology workflows
    Tsao, Andrew
    Yang, Xiaoyu
    Wong, Garrett
    Chandra, Vivek
    Delgadillo, Jacob
    Steinitz, Lindsay Bailey
    Balhouse, Brittany
    Paul, Colin
    Nguyen, Jakhan
    Djikeng, Sybelle
    Salen, Shyanne
    Sharp, Jason
    Dallas, Matt
    Kuninger, David
    CANCER RESEARCH, 2023, 83 (07)
  • [27] High-throughput segmentation of unmyelinated axons by deep learning
    Plebani, Emanuele
    Biscola, Natalia P.
    Havton, Leif A.
    Rajwa, Bartek
    Shemonti, Abida Sanjana
    Jaffey, Deborah
    Powley, Terry
    Keast, Janet R.
    Lu, Kun-Han
    Dundar, M. Murat
    SCIENTIFIC REPORTS, 2022, 12 (01)
  • [28] Uncovering the key dimensions of high-throughput biomolecular data using deep learning
    Zhang, Shixiong
    Li, Xiangtao
    Lin, Qiuzhen
    Lin, Jiecong
    Wong, Ka-Chun
    NUCLEIC ACIDS RESEARCH, 2020, 48 (10)
  • [29] High-throughput classification of S. cerevisiae tetrads using deep learning
    Szucs, Balint
    Selvan, Raghavendra
    Lisby, Michael
    YEAST, 2024, 41 (07) : 423 - 436
  • [30] A Deep-Learning Method for High-Throughput FMR1 Triplet Repeat Screening
    Ringel, L.
    Hallmark, E. C.
    Haynes, B. C.
    Larson, J. L.
    JOURNAL OF MOLECULAR DIAGNOSTICS, 2019, 21 (06): : 1173 - 1173