Machine learning model builds on imaging methods to better detect ovarian lesions

Machine learning model builds on imaging methods to better detect ovarian lesions
Ultrasound-enhanced Unet model structure. Credit: Photoacoustics (2022). DOI: 10.1016/j.pacs.2022.100420

Although ovarian cancer is the deadliest type of cancer for women, only about 20% of cases are found at an early stage, as there are no real screening tests for them and few symptoms to prompt them. Additionally, ovarian lesions are difficult to diagnose accurately—so difficult, in fact that there is no sign of cancer in more than 80% of women who undergo surgery to have lesions removed and tested.

Quing Zhu, the Edwin H. Murty Professor of Biomedical Engineering at Washington University in St. Louis' McKelvey School of Engineering, and members of her lab have applied a variety of imaging methods to diagnose ovarian cancer more accurately. Now, they have developed a new machine learning fusion model that takes advantage of existing ultrasound features of ovarian lesions to train the model to recognize whether a lesion is benign or cancerous from reconstructed images taken with .

Machine learning traditionally has been focused on single modality data. Recent findings have shown that multi-modality machine learning is more robust in its performance over unimodality methods. In a of 35 patients with more than 600 regions of interest, the model's accuracy was 90%.

It is the first study using ultrasound to enhance the machine learning performance of photoacoustic tomography reconstruction for . Results of the research are published in the December 2022 issue of the journal Photoacoustics.

"Existing modalities are mainly based on the size and shape of the ovarian lesions, which do not provide an accurate diagnosis for earlier and for risk assessment of large adnexal/ovarian lesions," said Zhu, also a professor of radiology at the School of Medicine. "Photoacoustic imaging adds more functional information about vascular contrast from hemoglobin concentration and ."

Yun Zou, a doctoral student in Zhu's lab, developed a new machine learning fusion model by combining an ultrasound neural network with a photoacoustic tomography to perform ovarian lesion diagnosis.

Cancerous lesions of the ovaries can present in several different morphologies from ultrasound: some are solid, and others have papillary projects inside cystic lesions, making them more difficult to diagnose. To improve overall diagnosis of ultrasound, they added the total and blood oxygenation saturation from photoacoustic imaging, both of which are biomarkers for cancerous ovarian tissue.

"Our results showed that the ultrasound-enhanced photoacoustic imaging fusion model reconstructed the target's total hemoglobin and blood oxygen saturation maps more accurately than other methods and provided an improved diagnosis of ovarian cancers from benign lesions," Zou said.

More information: Yun Zou et al, Ultrasound-enhanced Unet model for quantitative photoacoustic tomography of ovarian lesions, Photoacoustics (2022). DOI: 10.1016/j.pacs.2022.100420

Citation: Machine learning model builds on imaging methods to better detect ovarian lesions (2022, November 29) retrieved 24 April 2024 from https://medicalxpress.com/news/2022-11-machine-imaging-methods-ovarian-lesions.html
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