Perovskite Probe-Based Machine Learning Imaging Model for Rapid Pathologic Diagnosis of Cancers.
Jimei ChiYonggan XueYinying ZhouTeng HanBobin NingLijun ChengHongfei XieHuadong WangWenchen WangQingyu MengKaijie FanFangming GongJunzhen FanNan JiangZheng LiuKe PanHongyu SunJiajin ZhangQian ZhengJiandong WangMeng SuYanlin SongPublished in: ACS nano (2024)
Accurately distinguishing tumor cells from normal cells is a key issue in tumor diagnosis, evaluation, and treatment. Fluorescence-based immunohistochemistry as the standard method faces the inherent challenges of the heterogeneity of tumor cells and the lack of big data analysis of probing images. Here, we have demonstrated a machine learning-driven imaging method for rapid pathological diagnosis of five types of cancers (breast, colon, liver, lung, and stomach) using a perovskite nanocrystal probe. After conducting the bioanalysis of survivin expression in five different cancers, high-efficiency perovskite nanocrystal probes modified with the survivin antibody can recognize the cancer tissue section at the single cell level. The tumor to normal (T/N) ratio is 10.3-fold higher than that of a conventional fluorescent probe, which can successfully differentiate between tumors and adjacent normal tissues within 10 min. The features of the fluorescence intensity and pathological texture morphology have been extracted and analyzed from 1000 fluorescence images by machine learning. The final integrated decision model makes the area under the receiver operating characteristic curve (area under the curve) value of machine learning classification of breast, colon, liver, lung, and stomach above 90% while predicting the tumor organ of 92% of positive patients. This method demonstrates a high T/N ratio probe in the precise diagnosis of multiple cancers, which will be good for improving the accuracy of surgical resection and reducing cancer mortality.
Keyphrases
- machine learning
- big data
- living cells
- high efficiency
- artificial intelligence
- single molecule
- deep learning
- fluorescent probe
- single cell
- high resolution
- end stage renal disease
- gene expression
- papillary thyroid
- newly diagnosed
- room temperature
- chronic kidney disease
- energy transfer
- squamous cell
- induced apoptosis
- oxidative stress
- type diabetes
- quantum dots
- prognostic factors
- childhood cancer
- squamous cell carcinoma
- magnetic resonance imaging
- cardiovascular events
- high throughput
- high intensity
- convolutional neural network
- signaling pathway
- radiation therapy
- small molecule
- cell death
- lymph node metastasis
- decision making
- loop mediated isothermal amplification
- molecular dynamics simulations
- optical coherence tomography
- contrast enhanced
- cell proliferation
- locally advanced