Abstract

We have proposed a new tumor sensitization and targeting (TST) framework, named in vivo computation, in our previous investigations. The problem of TST for an early and microscopic tumor is interpreted from the computational perspective with nanorobots being the "natural" computing agents, the high-risk tissue being the search space, the tumor targeted being the global optimal solution, and the tumor-triggered biological gradient field (BGF) providing the aided knowledge for fitness evaluation of nanorobots. This natural computation process can be seen as on-the-fly path planning for nanorobot swarms with an unknown target position, which is different from the traditional path planning methods. Our previous works are focusing on the TST for a solitary lesion, where we proposed the weak priority evolution strategy (WP-ES) to adapt to the actuating mode of the homogeneous magnetic field used in the state-of-the-art nanorobotic platforms, and some in vitro validations were performed. In this paper, we focus on the problem of TST for multifocal tumors, which can be seen as a multimodal optimization problem for the "natural" computation. To overcome this issue, we propose a sequential targeting strategy (Se-TS) to complete TST for the multiple lesions with the assistance of nanorobot swarms, which are maneuvered by the external actuating and tracking devices according to the WP-ES. The Se-TS is used to modify the BGF landscape after a tumor is detected by a nanorobot swarm with the gathered BGF information around the detected tumor. Next, another nanorobot swarm will be employed to find the second tumor according to the modified BGF landscape without being misguided to the previous one. In this way, all the tumor lesions will be detected one by one. In other words, the paths of nanorobots to find the targets can be generated successively with the sequential modification of the BGF landscape. To demonstrate the effectiveness of the proposed Se-TS, we perform comprehensive simulation studies by enhancing the WP-ES based swarm intelligence algorithms using this strategy considering the realistic in-body constraints. The performance is compared against that of the "brute-force" search, which corresponds to the traditional systemic tumor targeting, and also against that of the standard swarm intelligence algorithms from the algorithmic perspective. Furthermore, some in vitro experiments are performed by using Janus microparticles as magnetic nanorobots, a two-dimensional microchannel network as the human vasculature, and a magnetic nanorobotic control system as the external actuating and tracking system. Results from the in silico simulations and in vitro experiments verify the effectiveness of the proposed Se-TS for two representative BGF landscapes.

Highlights

  • T UMOR sensitization and targeting (TST) for early and microscopic tumors remains a big challenge with the constraint of the low resolution of existing medical imaging techniques [1]–[3]

  • To realize the optimal control of nanorobots in the intended actuating (IA)/unintended actuating (UA) mode with the homogeneous magnetic field generated by the state-of-the-art actuating device, we have proposed a novel evolution strategy, namely the weak priority evolution strategy (WP-ES), which has been used to find an optimal movement direction of nanorobots in each iteration of the swarm intelligence algorithm [29]

  • Along this line of thought, we propose a sequential targeting strategy (Se-TS) for multifocal TST, which means a series of nanorobot swarms are employed sequentially in the search space to target the tumors one by one

Read more

Summary

INTRODUCTION

T UMOR sensitization and targeting (TST) for early and microscopic tumors remains a big challenge with the constraint of the low resolution of existing medical imaging techniques [1]–[3]. TST can be seen as a blind path planning problem for drug-loaded vehicles where the target (tumor) position is not known a priori, and various methods for direct manipulation to increase targeting efficiency have been considered [7]. Nanorobots with embedded chemical biosensors can be used to perform detection of tumor in hard-to-reach tissues and human body cavities, which is not possible using current surgical technologies [11]–[14]. Early detection and localization of solid tumors (e.g., sarcomas, carcinomas, and lymphomas) that may exist in most organs and tissues of the body are considered in this paper

Tumor Sensitization and Targeting as in Vivo Computation
Review of Previous Works
Contributions of the Current Work
Organization of the Paper
Problem Formulation
Tumor Vascular Network
Representative BGF Landscapes
Operation Modes
Sequential Targeting Strategy
SEQUENTIAL TARGETING STRATEGY BASED NATURAL COMPUTATIONAL ALGORITHMS
Se-TS for Gravitational Search Algorithm
Se-TS for Particle Swarm Optimization Algorithm
EXPERIMENTAL SETUP
PERFORMANCE ANALYSIS
In Vitro Experimental Results
Findings
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call