Vora Nilay, Shekar Prashant, Esmail Michael, Patra Abani, Georgakoudi Irene
Department of Biomedical Engineering, Tufts University, Medford, MA 02155, USA.
Department of Mathematics, Embry-Riddle Aeronautical University, Daytona Beach, FL, 32114, USA.
bioRxiv. 2023 Aug 3:2023.08.01.551485. doi: 10.1101/2023.08.01.551485.
Metastatic tumors have poor prognoses for progression-free and overall survival for all cancer patients. Rare circulating tumor cells (CTCs) and rarer circulating tumor cell clusters (CTCCs) are potential biomarkers of metastatic growth, with CTCCs representing an increased risk factor for metastasis. Current detection platforms are optimized for detection of CTCs only. Microfluidic chips and size exclusion methods have been proposed for CTCC detection; however, they lack utility and real-time monitoring capability. Confocal backscatter and fluorescence flow cytometry (BSFC) has been used for label-free detection of CTCCs in whole blood based on machine learning (ML) enabled peak classification. Here, we expand to a deep-learning (DL) -based, peak detection and classification model to detect CTCCs in whole blood data. We demonstrate that DL-based BSFC has a low false alarm rate of 0.78 events/min with a high Pearson correlation coefficient of 0.943 between detected events and expected events. DL-based BSFC of whole blood maintains a detection purity of 72% and a sensitivity of 35.3% for both homotypic and heterotypic CTCCs starting at a minimum size of two cells. We also demonstrate through artificial spiking studies that DL-based BSFC is sensitive to changes in the number of CTCCs present in the samples and does not add variability in detection beyond the expected variability from Poisson statistics. The performance established by DL-based BSFC motivates its use for detection of CTCCs. Further developments of label-free BSFC to enhance throughput could lead to critical applications in the clinical detection of CTCCs and isolation of CTCC from whole blood with minimal disruption and processing steps.
对于所有癌症患者而言,转移性肿瘤的无进展生存期和总生存期预后较差。罕见的循环肿瘤细胞(CTC)和更为罕见的循环肿瘤细胞簇(CTCC)是转移生长的潜在生物标志物,其中CTCC代表转移的风险增加因素。当前的检测平台仅针对CTC的检测进行了优化。已有人提出使用微流控芯片和尺寸排阻方法来检测CTCC;然而,它们缺乏实用性和实时监测能力。共聚焦背散射和荧光流式细胞术(BSFC)已用于基于机器学习(ML)的峰分类对全血中的CTCC进行无标记检测。在此,我们扩展到基于深度学习(DL)的峰检测和分类模型,以检测全血数据中的CTCC。我们证明,基于DL的BSFC的误报率低至0.78次事件/分钟,检测事件与预期事件之间的皮尔逊相关系数高达0.943。全血的基于DL的BSFC对于同型和异型CTCC均保持72%的检测纯度和35.3%的灵敏度,起始最小尺寸为两个细胞。我们还通过人工加样研究证明,基于DL的BSFC对样品中CTCC数量的变化敏感,并且在检测中不会增加超出泊松统计预期变异性的变异性。基于DL的BSFC所确立的性能促使其用于CTCC的检测。无标记BSFC的进一步发展以提高通量可能会在CTCC的临床检测以及从全血中分离CTCC方面带来关键应用,且干扰和处理步骤最少。